Question:
Describe about the Use of Mobile Healthcare Applications to Aid Medication Adherence?
Descriptive
Descriptive Statistics |
|||||
N |
Minimum |
Maximum |
Mean |
Std. Deviation |
|
sex |
114 |
1.00 |
2.00 |
1.6053 |
.49095 |
age |
114 |
1.00 |
5.00 |
1.9649 |
.93060 |
experience |
114 |
1.00 |
6.00 |
3.3070 |
1.59161 |
smartphone |
114 |
1.00 |
2.00 |
1.0351 |
.18481 |
platform |
110 |
1.00 |
2.00 |
1.1364 |
.34474 |
hours_per_day |
110 |
1.00 |
5.00 |
2.8909 |
1.28752 |
Valid N (listwise) |
110 |
In data analysis part the description of statistics are based on sex, age, experience, smart phone, platform, hours per day respectively. From the given data and statistics the number of responses found is 114. The minimum, maximum, mean and the standard deviation are calculated to analyze to signify the outcome of the given data (12).
The standard deviation of the the regulating parameters are calculated within 0 to 2 in each case.
To make the analysis more efficiently working a descriptive chart has been prepared. The chart shows the said parameters position in a detailed way (1). The X-axis of the chart showing the people of the survey and the Y- axis shows the minimum, maximum, mean and the standard deviation.
Descriptive Statistics |
|||||
N |
Minimum |
Maximum |
Mean |
Std. Deviation |
|
game_based |
92 |
1.00 |
5.00 |
3.8696 |
1.19723 |
healthcare_apps |
87 |
1.00 |
5.00 |
4.0000 |
1.17136 |
search_tool |
96 |
1.00 |
5.00 |
2.5521 |
.97192 |
social_networking |
103 |
1.00 |
5.00 |
1.9515 |
1.34586 |
news_apps |
105 |
1.00 |
5.00 |
2.2476 |
.96855 |
using |
110 |
1.00 |
5.00 |
1.5818 |
.86078 |
monitoring_health |
112 |
1.00 |
3.00 |
1.8750 |
.58702 |
manage_medication |
114 |
1.00 |
5.00 |
2.8333 |
.67728 |
consulting_healthcare_professional |
114 |
1.00 |
5.00 |
2.9649 |
.80847 |
different_medicines |
113 |
2.00 |
5.00 |
3.4248 |
.79961 |
take_medication |
114 |
1.00 |
4.00 |
2.5439 |
.71816 |
forget |
98 |
1.00 |
3.00 |
1.3469 |
.64380 |
side_effects |
86 |
1.00 |
4.00 |
2.1279 |
.76384 |
feel_well_enough |
28 |
1.00 |
3.00 |
2.4643 |
.74447 |
lack_of_time |
13 |
1.00 |
7.00 |
2.5385 |
1.45002 |
no_improvement |
24 |
2.00 |
5.00 |
2.5417 |
.72106 |
lack_of_understanding |
62 |
1.00 |
3.00 |
2.0484 |
.77729 |
dosage_form_inappropriate |
27 |
2.00 |
6.00 |
3.0000 |
.67937 |
strategy_to_take |
108 |
1.00 |
4.00 |
1.9167 |
.54900 |
helping_adherence |
114 |
1.00 |
4.00 |
2.2895 |
.72532 |
adherence_to_medication |
114 |
1.00 |
4.00 |
2.7807 |
.80660 |
recommending_external_device |
114 |
1.00 |
4.00 |
2.6140 |
.65862 |
promoted_by_professional |
113 |
1.00 |
4.00 |
2.3097 |
.87709 |
used_app_by_the_public |
114 |
1.00 |
7.00 |
1.7807 |
1.46196 |
aid_medication_adherece |
114 |
1.00 |
7.00 |
2.9035 |
1.49317 |
ease_of_use |
113 |
1.00 |
3.00 |
1.4071 |
.63579 |
reliability_security |
108 |
1.00 |
5.00 |
2.9259 |
1.03854 |
regulated_information |
104 |
1.00 |
6.00 |
3.8077 |
1.24695 |
In this segment based on sex, age, experience, smart phone, platform, hours per day respectively the other components stated in the left of the statistical table is optimized for the analytic purpose (4). Each case shows the minimum, maximum, mean and the standard deviation. Also the number of responses has been in the table to show the interest. Few of the vital analysis is made depending on the given chart to conclude a certain decision.
The above mentioned graph shows 5 different parameters and the result out of the given data analysis. In smart phone the uses of game based software or application is showed by the blue line and its related standard deviation is presented according to that (18). The same way the position of health care apps, search tools, social networking apps and news apps are presented in the mentioned color respectively.
N |
Minimum |
Maximum |
Mean |
Std. Deviation |
|
cost |
103 |
1.00 |
6.00 |
2.4951 |
1.20354 |
fun |
105 |
2.00 |
6.00 |
5.0381 |
1.00884 |
impact_on_battery_life |
103 |
1.00 |
6.00 |
5.1845 |
1.09139 |
manage_medicine_via_app |
114 |
1.00 |
4.00 |
2.6404 |
.99670 |
concern |
114 |
1.00 |
5.00 |
2.9211 |
1.68357 |
regulated |
114 |
1.00 |
5.00 |
1.5965 |
.84894 |
training |
114 |
1.00 |
5.00 |
2.1930 |
.95822 |
Valid N (listwise) |
1 |
Another descriptive statistics shows the cost, fun, impact on battery life, manage medicine via apps, concern, regulated, training of the health care apps (19). The number of responses, minimum, maximum, mean and the standard deviation are also statically calculated in this scenario as well.
Now here the analytic bar chart shows the number of responses for the cost, fun, impact on battery life, manage medicine via apps, concern, regulated, training of the health care apps. Also mean product is showed in the chart to confirm it statistically (10). The cost, concern and fun have managed to be at the top position in the chart.
Analysis of variance (ANOVA) is a specific procedure to analyze the particular differences between means of each group and the related associated variance.
ANOVA |
|||||
Sum of Squares |
df |
Mean Square |
F |
||
monitoring_health |
Between Groups |
1.620 |
1 |
1.620 |
4.866 |
Within Groups |
36.630 |
110 |
.333 |
||
Total |
38.250 |
111 |
|||
manage_medication |
Between Groups |
5.642 |
1 |
5.642 |
13.681 |
Within Groups |
46.191 |
112 |
.412 |
||
Total |
51.833 |
113 |
|||
consulting_healthcare_professional |
Between Groups |
3.860 |
1 |
3.860 |
6.175 |
Within Groups |
70.000 |
112 |
.625 |
||
Total |
73.860 |
113 |
|||
different_medicines |
Between Groups |
1.372 |
1 |
1.372 |
2.168 |
Within Groups |
70.239 |
111 |
.633 |
||
Total |
71.611 |
112 |
|||
take_medication |
Between Groups |
3.790 |
1 |
3.790 |
7.789 |
Within Groups |
54.491 |
112 |
.487 |
||
Total |
58.281 |
113 |
|||
side_effects |
Between Groups |
.033 |
1 |
.033 |
.057 |
Within Groups |
49.560 |
84 |
.590 |
||
Total |
49.593 |
85 |
|||
feel_well_enough |
Between Groups |
.618 |
1 |
.618 |
1.120 |
Within Groups |
14.346 |
26 |
.552 |
||
Total |
14.964 |
27 |
|||
lack_of_understanding |
Between Groups |
4.700 |
1 |
4.700 |
8.769 |
Within Groups |
32.155 |
60 |
.536 |
||
Total |
36.855 |
61 |
|||
strategy_to_take |
Between Groups |
4.875 |
1 |
4.875 |
18.877 |
Within Groups |
27.375 |
106 |
.258 |
||
Total |
32.250 |
107 |
|||
helping_adherence |
Between Groups |
2.093 |
1 |
2.093 |
4.087 |
Within Groups |
57.355 |
112 |
.512 |
||
Total |
59.447 |
113 |
|||
adherence_to_medication |
Between Groups |
.327 |
1 |
.327 |
.500 |
Within Groups |
73.191 |
112 |
.653 |
The above Analysis of variance (ANOVA) shows the sum of squares, df, mean square and the f of the given parameters mentioned in the table format.
ANOVA
Sig. |
||
monitoring_health |
Between Groups |
.029 |
Within Groups |
||
Total |
||
manage_medication |
Between Groups |
.000 |
Within Groups |
||
Total |
||
consulting_healthcare_professional |
Between Groups |
.014 |
Within Groups |
||
Total |
||
different_medicines |
Between Groups |
.144 |
Within Groups |
||
Total |
||
take_medication |
Between Groups |
.006 |
Within Groups |
||
Total |
||
side_effects |
Between Groups |
.812 |
Within Groups |
||
Total |
||
feel_well_enough |
Between Groups |
.300 |
Within Groups |
||
Total |
||
lack_of_understanding |
Between Groups |
.004 |
Within Groups |
||
Total |
||
strategy_to_take |
Between Groups |
.000 |
Within Groups |
||
Total |
||
helping_adherence |
Between Groups |
.046 |
Within Groups |
||
Total |
||
adherence_to_medication |
Between Groups |
.481 |
Within Groups |
ANOVA |
|||||
Sum of Squares |
df |
Mean Square |
F |
||
adherence_to_medication |
Total |
73.518 |
113 |
||
recommending_external_device |
Between Groups |
.054 |
1 |
.054 |
.123 |
Within Groups |
48.964 |
112 |
.437 |
||
Total |
49.018 |
113 |
|||
promoted_by_professional |
Between Groups |
.150 |
1 |
.150 |
.194 |
Within Groups |
86.009 |
111 |
.775 |
||
Total |
86.159 |
112 |
|||
fun |
Between Groups |
.887 |
1 |
.887 |
.871 |
Within Groups |
104.960 |
103 |
1.019 |
||
Total |
105.848 |
104 |
|||
impact_on_battery_life |
Between Groups |
.414 |
1 |
.414 |
.346 |
Within Groups |
121.081 |
101 |
1.199 |
||
Total |
121.495 |
102 |
|||
manage_medicine_via_app |
Between Groups |
1.700 |
1 |
1.700 |
1.722 |
Within Groups |
110.555 |
112 |
.987 |
||
Total |
112.254 |
113 |
|||
concern |
Between Groups |
3.517 |
1 |
3.517 |
1.243 |
Within Groups |
316.773 |
112 |
2.828 |
||
Total |
320.289 |
113 |
|||
regulated |
Between Groups |
1.475 |
1 |
1.475 |
2.066 |
Within Groups |
79.964 |
112 |
.714 |
||
Total |
81.439 |
113 |
|||
training |
Between Groups |
1.991 |
1 |
1.991 |
2.191 |
Within Groups |
101.764 |
112 |
.909 |
||
Total |
103.754 |
113 |
|||
used_app_by_the_public |
Between Groups |
2.527 |
1 |
2.527 |
1.184 |
Within Groups |
238.991 |
112 |
2.134 |
||
Total |
241.518 |
113 |
|||
aid_medication_adherece |
Between Groups |
.039 |
1 |
.039 |
.017 |
Within Groups |
251.900 |
112 |
2.249 |
||
Total |
251.939 |
113 |
|||
ease_of_use |
Between Groups |
1.458 |
1 |
1.458 |
3.693 |
This is another Analysis of variance (ANOVA) which is purposefully used to show the the sum of squares, df, mean square and the f of the given parameters mentioned in the table format (7).
ANOVA |
||
Sig. |
||
adherence_to_medication |
Total |
|
recommending_external_device |
Between Groups |
.726 |
Within Groups |
||
Total |
||
promoted_by_professional |
Between Groups |
.661 |
Within Groups |
||
Total |
||
fun |
Between Groups |
.353 |
Within Groups |
||
Total |
||
impact_on_battery_life |
Between Groups |
.558 |
Within Groups |
||
Total |
||
manage_medicine_via_app |
Between Groups |
.192 |
Within Groups |
||
Total |
||
concern |
Between Groups |
.267 |
Within Groups |
||
Total |
||
Regulated |
Between Groups |
.153 |
Within Groups |
||
Total |
||
Training |
Between Groups |
.142 |
Within Groups |
||
Total |
||
used_app_by_the_public |
Between Groups |
.279 |
Within Groups |
||
Total |
||
aid_medication_adherece |
Between Groups |
.896 |
Within Groups |
||
Total |
||
ease_of_use |
Between Groups |
.057 |
ANOVA |
|||||
Sum of Squares |
df |
Mean Square |
F |
||
ease_of_use |
Within Groups |
43.817 |
111 |
.395 |
|
Total |
45.274 |
112 |
|||
reliability_security |
Between Groups |
3.561 |
1 |
3.561 |
3.375 |
Within Groups |
111.846 |
106 |
1.055 |
||
Total |
115.407 |
107 |
|||
regulated_information |
Between Groups |
7.114 |
1 |
7.114 |
4.741 |
Within Groups |
153.040 |
102 |
1.500 |
||
Total |
160.154 |
103 |
|||
cost |
Between Groups |
4.202 |
1 |
4.202 |
2.957 |
Within Groups |
143.545 |
101 |
1.421 |
||
Total |
147.748 |
102 |
The above tabled ANOVA is made to show the sum of squares, df, mean square and the f of the given parameters such as ease of use, reliability security associated with the app, regulated information and the cost regarding to the apps.
ANOVA |
||
Sig. |
||
ease_of_use |
Within Groups |
|
Total |
||
reliability_security |
Between Groups |
.069 |
Within Groups |
||
Total |
||
regulated_information |
Between Groups |
.032 |
Within Groups |
||
Total |
||
Cost |
Between Groups |
.089 |
Within Groups |
||
Total |
Now it is important to say that the partial correlation of the given data is also prepared statically to analyze the importance. Basically partial correlation is used to measure the specific degree of association between two random variables (5).
Correlations
smartphone |
platform |
hours_per_day |
||
Smartphone |
Pearson Correlation |
1 |
.a |
.a |
Sig. (2-tailed) |
.000 |
.000 |
||
N |
114 |
110 |
110 |
|
Platform |
Pearson Correlation |
.a |
1 |
-.090 |
Sig. (2-tailed) |
.000 |
.349 |
||
N |
110 |
110 |
110 |
|
hours_per_day |
Pearson Correlation |
.a |
-.090 |
1 |
Sig. (2-tailed) |
.000 |
.349 |
||
N |
110 |
110 |
110 |
|
healthcare_apps |
Pearson Correlation |
.a |
.097 |
-.143 |
Sig. (2-tailed) |
.000 |
.370 |
.187 |
|
N |
87 |
87 |
87 |
|
game_based |
Pearson Correlation |
.a |
-.100 |
-.149 |
Sig. (2-tailed) |
.000 |
.341 |
.156 |
|
N |
92 |
92 |
92 |
|
search_tool |
Pearson Correlation |
.a |
-.394** |
.285** |
Sig. (2-tailed) |
.000 |
.000 |
.005 |
|
N |
96 |
96 |
96 |
|
social_networking |
Pearson Correlation |
.a |
.145 |
.035 |
Sig. (2-tailed) |
.000 |
.145 |
.726 |
|
N |
103 |
103 |
103 |
|
news_apps |
Pearson Correlation |
.a |
.121 |
.167 |
Sig. (2-tailed) |
.000 |
.219 |
.089 |
|
N |
105 |
105 |
105 |
|
Using |
Pearson Correlation |
.a |
-.115 |
-.166 |
Sig. (2-tailed) |
.000 |
.231 |
.084 |
|
N |
110 |
110 |
110 |
|
monitoring_health |
Pearson Correlation |
.206* |
-.223* |
-.209* |
Sig. (2-tailed) |
.029 |
.021 |
.030 |
|
N |
112 |
108 |
108 |
|
manage_medication |
Pearson Correlation |
.330** |
-.251** |
.006 |
Sig. (2-tailed) |
.000 |
.008 |
.954 |
This correlation data chart is correlating the smart phone, the given platform and the usage of per hours with the other statistical variables lined into the left side of the chart.
Correlations |
||||
healthcare_apps |
game_based |
search_tool |
||
Smartphone |
Pearson Correlation |
. |
.a |
.a |
Sig. (2-tailed) |
.000 |
.000 |
.000 |
|
N |
87 |
92 |
96 |
|
Platform |
Pearson Correlation |
.097a |
-.100 |
-.394 |
Sig. (2-tailed) |
.370 |
.341 |
.000 |
|
N |
87 |
92 |
96 |
|
hours_per_day |
Pearson Correlation |
-.143a |
-.149 |
.285 |
Sig. (2-tailed) |
.187 |
.156 |
.005 |
|
N |
87 |
92 |
96 |
|
healthcare_apps |
Pearson Correlation |
1a |
.062 |
-.444 |
Sig. (2-tailed) |
.569 |
.000 |
||
N |
87 |
86 |
86 |
|
game_based |
Pearson Correlation |
.062a |
1 |
.012 |
Sig. (2-tailed) |
.569 |
.914 |
||
N |
86 |
92 |
88 |
|
search_tool |
Pearson Correlation |
-.444a |
.012** |
1** |
Sig. (2-tailed) |
.000 |
.914 |
||
N |
86 |
88 |
96 |
|
social_networking |
Pearson Correlation |
-.358a |
-.471 |
-.271 |
Sig. (2-tailed) |
.001 |
.000 |
.008 |
|
N |
87 |
90 |
94 |
|
news_apps |
Pearson Correlation |
-.286a |
-.304 |
-.036 |
Sig. (2-tailed) |
.007 |
.004 |
.728 |
|
N |
87 |
90 |
96 |
|
Using |
Pearson Correlation |
-.313a |
.035 |
.309 |
Sig. (2-tailed) |
.003 |
.740 |
.002 |
|
N |
87 |
92 |
96 |
|
monitoring_health |
Pearson Correlation |
-.017* |
.280* |
.162* |
Sig. (2-tailed) |
.873 |
.007 |
.116 |
|
N |
87 |
90 |
96 |
|
manage_medication |
Pearson Correlation |
.016** |
.250** |
.274 |
Sig. (2-tailed) |
.885 |
.016 |
.007 |
This correlation data chart is correlating the health care app, game based app and the usage of search tool apps with the other statistical variables lined into the left side of the chart.
social_networking |
news_apps |
using |
||
Smartphone |
Pearson Correlation |
. |
.a |
.a |
Sig. (2-tailed) |
.000 |
.000 |
.000 |
|
N |
103 |
105 |
110 |
|
Platform |
Pearson Correlation |
.145a |
.121 |
-.115 |
Sig. (2-tailed) |
.145 |
.219 |
.231 |
|
N |
103 |
105 |
110 |
|
hours_per_day |
Pearson Correlation |
.035a |
.167 |
-.166 |
Sig. (2-tailed) |
.726 |
.089 |
.084 |
|
N |
103 |
105 |
110 |
|
healthcare_apps |
Pearson Correlation |
-.358a |
-.286 |
-.313 |
Sig. (2-tailed) |
.001 |
.007 |
.003 |
|
N |
87 |
87 |
87 |
|
game_based |
Pearson Correlation |
-.471a |
-.304 |
.035 |
Sig. (2-tailed) |
.000 |
.004 |
.740 |
|
N |
90 |
90 |
92 |
|
search_tool |
Pearson Correlation |
-.271a |
-.036** |
.309** |
Sig. (2-tailed) |
.008 |
.728 |
.002 |
|
N |
94 |
96 |
96 |
|
social_networking |
Pearson Correlation |
1a |
-.202 |
-.045 |
Sig. (2-tailed) |
.043 |
.651 |
||
N |
103 |
101 |
103 |
|
news_apps |
Pearson Correlation |
-.202a |
1 |
-.005 |
Sig. (2-tailed) |
.043 |
.960 |
||
N |
101 |
105 |
105 |
|
Using |
Pearson Correlation |
-.045a |
-.005 |
1 |
Sig. (2-tailed) |
.651 |
.960 |
||
N |
103 |
105 |
110 |
|
monitoring_health |
Pearson Correlation |
-.125* |
-.096* |
.065* |
Sig. (2-tailed) |
.211 |
.331 |
.503 |
|
N |
101 |
105 |
108 |
|
manage_medication |
Pearson Correlation |
-.208** |
-.067** |
.126 |
Sig. (2-tailed) |
.035 |
.495 |
.188 |
This correlation data chart is correlating the social networking apps, new apps and the using apps with the other statistical variables lined into the left side of the chart.
monitoring_health |
manage_medication |
consulting_healthcare_professional |
||
Smartphone |
Pearson Correlation |
.206 |
.330a |
-.229a |
Sig. (2-tailed) |
.029 |
.000 |
.014 |
|
N |
112 |
114 |
114 |
|
Platform |
Pearson Correlation |
-.223a |
-.251 |
-.066 |
Sig. (2-tailed) |
.021 |
.008 |
.491 |
|
N |
108 |
110 |
110 |
|
hours_per_day |
Pearson Correlation |
-.209a |
.006 |
.116 |
Sig. (2-tailed) |
.030 |
.954 |
.229 |
|
N |
108 |
110 |
110 |
|
healthcare_apps |
Pearson Correlation |
-.017a |
.016 |
.109 |
Sig. (2-tailed) |
.873 |
.885 |
.316 |
|
N |
87 |
87 |
87 |
|
game_based |
Pearson Correlation |
.280a |
.250 |
.048 |
Sig. (2-tailed) |
.007 |
.016 |
.651 |
|
N |
90 |
92 |
92 |
|
search_tool |
Pearson Correlation |
.162a |
.274** |
-.182** |
Sig. (2-tailed) |
.116 |
.007 |
.076 |
|
N |
96 |
96 |
96 |
|
social_networking |
Pearson Correlation |
-.125a |
-.208 |
.007 |
Sig. (2-tailed) |
.211 |
.035 |
.945 |
|
N |
101 |
103 |
103 |
|
news_apps |
Pearson Correlation |
-.096a |
-.067 |
-.102 |
Sig. (2-tailed) |
.331 |
.495 |
.300 |
|
N |
105 |
105 |
105 |
|
Using |
Pearson Correlation |
.065a |
.126 |
.106 |
Sig. (2-tailed) |
.503 |
.188 |
.269 |
|
N |
108 |
110 |
110 |
|
monitoring_health |
Pearson Correlation |
1* |
.463* |
-.085* |
Sig. (2-tailed) |
.000 |
.375 |
||
N |
112 |
112 |
112 |
|
manage_medication |
Pearson Correlation |
.463** |
1** |
-.075 |
Sig. (2-tailed) |
.000 |
.425 |
This correlation data chart is correlating the monitoring health app, manage medication and consulting healthcare professionals with the other statistical variables lined into the left side of the chart (9).
Correlations |
||||
different_medicines |
take_medication |
forget |
||
Smartphone |
Pearson Correlation |
.138 |
.255a |
.a |
Sig. (2-tailed) |
.144 |
.006 |
.000 |
|
N |
113 |
114 |
98 |
|
Platform |
Pearson Correlation |
-.091a |
.090 |
.143 |
Sig. (2-tailed) |
.349 |
.351 |
.160 |
|
N |
109 |
110 |
98 |
|
hours_per_day |
Pearson Correlation |
.289a |
.032 |
-.268 |
Sig. (2-tailed) |
.002 |
.743 |
.008 |
|
N |
109 |
110 |
98 |
|
healthcare_apps |
Pearson Correlation |
-.267a |
-.146 |
.025 |
Sig. (2-tailed) |
.012 |
.177 |
.828 |
|
N |
87 |
87 |
78 |
|
game_based |
Pearson Correlation |
-.222a |
.189 |
-.174 |
Sig. (2-tailed) |
.033 |
.072 |
.124 |
|
N |
92 |
92 |
80 |
|
search_tool |
Pearson Correlation |
.440a |
-.058** |
.016** |
Sig. (2-tailed) |
.000 |
.576 |
.883 |
|
N |
95 |
96 |
86 |
|
social_networking |
Pearson Correlation |
-.058a |
.132 |
.080 |
Sig. (2-tailed) |
.562 |
.183 |
.449 |
|
N |
102 |
103 |
91 |
|
news_apps |
Pearson Correlation |
.256a |
-.100 |
.020 |
Sig. (2-tailed) |
.009 |
.309 |
.848 |
|
N |
104 |
105 |
95 |
|
Using |
Pearson Correlation |
.127a |
.204 |
-.167 |
Sig. (2-tailed) |
.188 |
.032 |
.101 |
|
N |
109 |
110 |
98 |
|
monitoring_health |
Pearson Correlation |
.249* |
.271* |
.142* |
Sig. (2-tailed) |
.008 |
.004 |
.162 |
|
N |
111 |
112 |
98 |
|
manage_medication |
Pearson Correlation |
.280** |
.479** |
.122 |
Sig. (2-tailed) |
.003 |
.000 |
.232 |
This correlation data chart is correlating the different medicines, taking medicines and the forget mentality with the other statistical variables lined into the left side of the chart.
side_effects |
feel_well_enough |
lack_of_time |
||
Smartphone |
Pearson Correlation |
-.026 |
.203a |
.a |
Sig. (2-tailed) |
.812 |
.300 |
.000 |
|
N |
86 |
28 |
13 |
|
Platform |
Pearson Correlation |
.141a |
.030 |
-.319 |
Sig. (2-tailed) |
.200 |
.885 |
.288 |
|
N |
84 |
26 |
13 |
|
hours_per_day |
Pearson Correlation |
-.200a |
-.446 |
.509 |
Sig. (2-tailed) |
.068 |
.022 |
.076 |
|
N |
84 |
26 |
13 |
|
healthcare_apps |
Pearson Correlation |
.217a |
-.830 |
.091 |
Sig. (2-tailed) |
.083 |
.000 |
.791 |
|
N |
65 |
19 |
11 |
|
game_based |
Pearson Correlation |
-.093a |
.071 |
.284 |
Sig. (2-tailed) |
.455 |
.760 |
.370 |
|
N |
67 |
21 |
12 |
|
search_tool |
Pearson Correlation |
-.326a |
.152** |
-.010** |
Sig. (2-tailed) |
.005 |
.522 |
.973 |
|
N |
72 |
20 |
13 |
|
social_networking |
Pearson Correlation |
.086a |
-.048 |
-.415 |
Sig. (2-tailed) |
.456 |
.814 |
.159 |
|
N |
77 |
26 |
13 |
|
news_apps |
Pearson Correlation |
.024a |
-.059 |
.020 |
Sig. (2-tailed) |
.829 |
.784 |
.948 |
|
N |
81 |
24 |
13 |
|
Using |
Pearson Correlation |
-.091a |
.609 |
-.348 |
Sig. (2-tailed) |
.413 |
.001 |
.243 |
|
N |
84 |
26 |
13 |
|
monitoring_health |
Pearson Correlation |
-.259* |
-.030* |
-.141* |
Sig. (2-tailed) |
.016 |
.885 |
.646 |
|
N |
86 |
26 |
13 |
|
manage_medication |
Pearson Correlation |
-.025** |
-.238** |
.563 |
Sig. (2-tailed) |
.816 |
.223 |
.045 |
This correlation data chart is correlating the side effects, feel well enough and the lack of time with the other statistical variables lined into the left side of the chart.
Correlations |
||||
no_improvement |
lack_of_understanding |
dosage_form_inappropriate |
||
Smartphone |
Pearson Correlation |
. |
-.357a |
.a |
Sig. (2-tailed) |
.000 |
.004 |
.000 |
|
N |
24 |
62 |
27 |
|
Platform |
Pearson Correlation |
-.160a |
-.019 |
-.530 |
Sig. (2-tailed) |
.455 |
.885 |
.004 |
|
N |
24 |
58 |
27 |
|
hours_per_day |
Pearson Correlation |
.582a |
.545 |
.250 |
Sig. (2-tailed) |
.003 |
.000 |
.209 |
|
N |
24 |
58 |
27 |
|
healthcare_apps |
Pearson Correlation |
-.388a |
.280 |
-.123 |
Sig. (2-tailed) |
.082 |
.069 |
.566 |
|
N |
21 |
43 |
24 |
|
game_based |
Pearson Correlation |
.329a |
.172 |
.177 |
Sig. (2-tailed) |
.126 |
.238 |
.409 |
|
N |
23 |
49 |
24 |
|
search_tool |
Pearson Correlation |
-.283a |
-.132** |
.126** |
Sig. (2-tailed) |
.214 |
.366 |
.531 |
|
N |
21 |
49 |
27 |
|
social_networking |
Pearson Correlation |
.296a |
-.361 |
-.122 |
Sig. (2-tailed) |
.160 |
.009 |
.545 |
|
N |
24 |
51 |
27 |
|
news_apps |
Pearson Correlation |
-.282a |
.202 |
.000 |
Sig. (2-tailed) |
.203 |
.147 |
1.000 |
|
N |
22 |
53 |
27 |
|
Using |
Pearson Correlation |
.503a |
.046 |
.000 |
Sig. (2-tailed) |
.012 |
.734 |
1.000 |
|
N |
24 |
58 |
27 |
|
monitoring_health |
Pearson Correlation |
-.079* |
-.280* |
.231* |
Sig. (2-tailed) |
.727 |
.030 |
.245 |
|
N |
22 |
60 |
27 |
|
manage_medication |
Pearson Correlation |
.160** |
-.208** |
.581 |
Sig. (2-tailed) |
.456 |
.105 |
.001 |
This correlation data chart is correlating no improvement, lack of understanding and the doses form with the other statistical variables lined into the left side of the chart (11).
Correlations |
||||
strategy_to_take |
helping_adherence |
adherence_to_medication |
||
Smartphone |
Pearson Correlation |
.389 |
.188a |
-.067a |
Sig. (2-tailed) |
.000 |
.046 |
.481 |
|
N |
108 |
114 |
114 |
|
Platform |
Pearson Correlation |
.032a |
-.150 |
.037 |
Sig. (2-tailed) |
.749 |
.117 |
.700 |
|
N |
104 |
110 |
110 |
|
hours_per_day |
Pearson Correlation |
-.018a |
-.029 |
.057 |
Sig. (2-tailed) |
.857 |
.765 |
.555 |
|
N |
104 |
110 |
110 |
|
healthcare_apps |
Pearson Correlation |
.292a |
-.205 |
.191 |
Sig. (2-tailed) |
.008 |
.057 |
.076 |
|
N |
81 |
87 |
87 |
|
game_based |
Pearson Correlation |
.040a |
-.042 |
-.327 |
Sig. (2-tailed) |
.716 |
.691 |
.001 |
|
N |
86 |
92 |
92 |
|
search_tool |
Pearson Correlation |
-.281a |
-.234** |
-.347** |
Sig. (2-tailed) |
.007 |
.022 |
.001 |
|
N |
90 |
96 |
96 |
|
social_networking |
Pearson Correlation |
.108a |
.379 |
.423 |
Sig. (2-tailed) |
.294 |
.000 |
.000 |
|
N |
97 |
103 |
103 |
|
news_apps |
Pearson Correlation |
.019a |
-.072 |
-.286 |
Sig. (2-tailed) |
.853 |
.465 |
.003 |
|
N |
99 |
105 |
105 |
|
Using |
Pearson Correlation |
-.210a |
.032 |
.084 |
Sig. (2-tailed) |
.032 |
.737 |
.385 |
|
N |
104 |
110 |
110 |
|
monitoring_health |
Pearson Correlation |
.218* |
.003* |
-.378* |
Sig. (2-tailed) |
.025 |
.978 |
.000 |
|
N |
106 |
112 |
112 |
|
manage_medication |
Pearson Correlation |
.190** |
.063** |
-.278 |
Sig. (2-tailed) |
.049 |
.505 |
.003 |
This correlation data chart is correlating strategy to take, helping adherence and adherence to medication with the other statistical variables lined into the left side of the chart.
Correlations |
||||
recommending_external_device |
promoted_by_professional |
used_app_by_the_public |
||
Smartphone |
Pearson Correlation |
-.033 |
.042a |
-.102a |
Sig. (2-tailed) |
.726 |
.661 |
.279 |
|
N |
114 |
113 |
114 |
|
Platform |
Pearson Correlation |
-.252a |
-.207 |
.231 |
Sig. (2-tailed) |
.008 |
.031 |
.015 |
|
N |
110 |
109 |
110 |
|
hours_per_day |
Pearson Correlation |
-.081a |
.060 |
.056 |
Sig. (2-tailed) |
.398 |
.534 |
.559 |
|
N |
110 |
109 |
110 |
|
healthcare_apps |
Pearson Correlation |
.132a |
.035 |
.186 |
Sig. (2-tailed) |
.224 |
.746 |
.085 |
|
N |
87 |
87 |
87 |
|
game_based |
Pearson Correlation |
-.134a |
-.144 |
-.210 |
Sig. (2-tailed) |
.203 |
.171 |
.044 |
|
N |
92 |
92 |
92 |
|
search_tool |
Pearson Correlation |
-.146a |
-.116** |
-.250** |
Sig. (2-tailed) |
.155 |
.264 |
.014 |
|
N |
96 |
95 |
96 |
|
social_networking |
Pearson Correlation |
.056a |
.049 |
.191 |
Sig. (2-tailed) |
.576 |
.628 |
.053 |
|
N |
103 |
102 |
103 |
|
news_apps |
Pearson Correlation |
-.158a |
-.038 |
.171 |
Sig. (2-tailed) |
.108 |
.704 |
.081 |
|
N |
105 |
104 |
105 |
|
Using |
Pearson Correlation |
.039a |
.073 |
-.020 |
Sig. (2-tailed) |
.685 |
.452 |
.836 |
|
N |
110 |
109 |
110 |
|
monitoring_health |
Pearson Correlation |
.204* |
.226* |
-.155* |
Sig. (2-tailed) |
.031 |
.017 |
.102 |
|
N |
112 |
111 |
112 |
|
manage_medication |
Pearson Correlation |
.212** |
.268** |
-.243 |
Sig. (2-tailed) |
.024 |
.004 |
.009 |
This correlation data chart is correlating recommending external advice, promoted by professional and usage by the public with the other statistical variables lined into the left side of the chart.
aid_medication_adherece |
ease_of_use |
reliability_security |
||
Smartphone |
Pearson Correlation |
.012 |
.179a |
-.176a |
Sig. (2-tailed) |
.896 |
.057 |
.069 |
|
N |
114 |
113 |
108 |
|
Platform |
Pearson Correlation |
-.166a |
-.154 |
.121 |
Sig. (2-tailed) |
.082 |
.110 |
.222 |
|
N |
110 |
109 |
104 |
|
hours_per_day |
Pearson Correlation |
.318a |
-.055 |
-.317 |
Sig. (2-tailed) |
.001 |
.570 |
.001 |
|
N |
110 |
109 |
104 |
|
healthcare_apps |
Pearson Correlation |
-.155a |
.254 |
.171 |
Sig. (2-tailed) |
.151 |
.018 |
.118 |
|
N |
87 |
87 |
85 |
|
game_based |
Pearson Correlation |
-.404a |
.013 |
.226 |
Sig. (2-tailed) |
.000 |
.900 |
.034 |
|
N |
92 |
91 |
88 |
|
search_tool |
Pearson Correlation |
.282a |
-.234** |
-.207** |
Sig. (2-tailed) |
.005 |
.023 |
.045 |
|
N |
96 |
95 |
94 |
|
social_networking |
Pearson Correlation |
.338a |
-.126 |
-.037 |
Sig. (2-tailed) |
.000 |
.207 |
.714 |
|
N |
103 |
102 |
101 |
|
news_apps |
Pearson Correlation |
-.035a |
-.033 |
-.057 |
Sig. (2-tailed) |
.724 |
.738 |
.575 |
|
N |
105 |
104 |
101 |
|
Using |
Pearson Correlation |
.297a |
.059 |
-.022 |
Sig. (2-tailed) |
.002 |
.542 |
.824 |
|
N |
110 |
109 |
104 |
|
monitoring_health |
Pearson Correlation |
-.099* |
.256* |
.093* |
Sig. (2-tailed) |
.301 |
.007 |
.342 |
|
N |
112 |
111 |
106 |
|
manage_medication |
Pearson Correlation |
-.112** |
.201** |
-.277 |
Sig. (2-tailed) |
.234 |
.033 |
.004 |
This correlation data chart is correlating aid medication adherence, ease of use and security reliability with the other statistical variables lined into the left side of the chart.
Correlations |
|||||
regulated_information |
cost |
fun |
impact_on_battery_life |
||
Smartphone |
Pearson Correlation |
-.211 |
.169a |
.092a |
.058a |
Sig. (2-tailed) |
.032 |
.089 |
.353 |
.558 |
|
N |
104 |
103 |
105 |
103 |
|
Platform |
Pearson (3) Correlation |
-.029a |
.027 |
-.095 |
.021 |
Sig. (2-tailed) |
.773 |
.789 |
.345 |
.838 |
|
N |
100 |
99 |
101 |
99 |
|
hours_per_day |
Pearson Correlation |
-.194a |
.331 |
.148 |
.132 |
Sig. (2-tailed) |
.053 |
.001 |
.139 |
.192 |
|
N |
100 |
99 |
101 |
99 |
|
healthcare_apps |
Pearson Correlation |
.346a |
-.356 |
.041 |
-.256 |
Sig. (2-tailed) |
.001 |
.001 |
.710 |
.020 |
|
N |
83 |
82 |
84 |
82 |
|
game_based |
Pearson Correlation |
-.057a |
-.067 |
.150 |
-.059 |
Sig. (2-tailed) |
.607 |
.544 |
.169 |
.592 |
|
N |
85 |
84 |
86 |
84 |
|
search_tool |
Pearson Correlation |
.162a |
.176** |
.002** |
.030** |
Sig. (2-tailed) |
.128 |
.100 |
.983 |
.780 |
|
N |
90 |
89 |
91 |
89 |
|
social_networking |
Pearson Correlation |
-.369a |
.292 |
.119 |
.083** |
Sig. (2-tailed) |
.000 |
.004 |
.244 |
.423 |
|
N |
97 |
96 |
98 |
96 |
|
news_apps |
Pearson Correlation |
-.108a |
.006 |
-.213 |
.096** |
Sig. (2-tailed) |
.292 |
.953 |
.035 |
.353 |
|
N |
97 |
96 |
98 |
96 |
|
Using |
Pearson Correlation |
-.149a |
-.021 |
.119 |
.088** |
Sig. (2-tailed) |
.140 |
.833 |
.236 |
.385 |
|
N |
100 |
99 |
101 |
99 |
|
monitoring_health |
Pearson Correlation |
-.133* |
-.052* |
.177* |
-.093 |
Sig. (2-tailed) |
.183 |
.605 |
.074 |
.354 |
|
N |
102 |
101 |
103 |
101 |
|
manage_medication |
Pearson Correlation |
-.338** |
.376** |
.308 |
-.114 |
Sig. (2-tailed) |
.000 |
.000 |
.001 |
.254 |
Correlations |
|||||
manage_medicine_via_app |
concern |
regulated |
training |
||
Smartphone |
Pearson Correlation |
-.123 |
-.105a |
-.135a |
-.139a |
Sig. (2-tailed) |
.192 |
.267 |
.153 |
.142 |
|
N |
114 |
114 |
114 |
114 |
|
Platform |
Pearson Correlation |
-.214a |
-.005 |
-.040 |
-.146 |
Sig. (2-tailed) |
.025 |
.959 |
.682 |
.128 |
|
N |
110 |
110 |
110 |
110 |
|
hours_per_day |
Pearson Correlation |
-.029a |
.023 |
.028 |
-.062 |
Sig. (2-tailed) |
.763 |
.812 |
.768 |
.519 |
|
N |
110 |
110 |
110 |
110 |
|
healthcare_apps |
Pearson Correlation |
.173a |
.286 |
.237 |
-.053 |
Sig. (2-tailed) |
.109 |
.007 |
.027 |
.627 |
|
N |
87 |
87 |
87 |
87 |
|
game_based |
Pearson Correlation |
-.040a |
.155 |
-.060 |
.025 |
Sig. (2-tailed) |
.705 |
.139 |
.569 |
.813 |
|
N |
92 |
92 |
92 |
92 |
|
search_tool |
Pearson Correlation |
-.195a |
-.059** |
-.150** |
-.018** |
Sig. (2-tailed) |
.056 |
.570 |
.145 |
.861 |
|
N |
96 |
96 |
96 |
96 |
|
social_networking |
Pearson Correlation |
-.181a |
-.198 |
.042 |
-.081** |
Sig. (2-tailed) |
.067 |
.045 |
.670 |
.415 |
|
N |
103 |
103 |
103 |
103 |
|
news_apps |
Pearson Correlation |
-.038a |
.017 |
.042 |
-.094** |
Sig. (2-tailed) |
.697 |
.861 |
.672 |
.342 |
|
N |
105 |
105 |
105 |
105 |
|
Using |
Pearson Correlation |
.254a |
-.334 |
-.082 |
.388** |
Sig. (2-tailed) |
.008 |
.000 |
.396 |
.000 |
|
N |
110 |
110 |
110 |
110 |
|
monitoring_health |
Pearson Correlation |
.041* |
-.101* |
.045* |
.040 |
Sig. (2-tailed) |
.670 |
.292 |
.638 |
.676 |
|
N |
112 |
112 |
112 |
112 |
|
manage_medication |
Pearson Correlation |
.186** |
-.027** |
-.103 |
.255 |
Sig. (2-tailed) |
.048 |
.774 |
.277 |
.006 |
Correlations |
||||
sex |
age |
experience |
||
Smartphone |
Pearson Correlation |
-.041 |
.316a |
.324a |
Sig. (2-tailed) |
.664 |
.001 |
.000 |
|
N |
114 |
114 |
114 |
|
Platform |
Pearson Correlation |
-.225a |
.070 |
.015 |
Sig. (2-tailed) |
.018 |
.465 |
.876 |
|
N |
110 |
110 |
110 |
|
hours_per_day |
Pearson Correlation |
-.054a |
-.351 |
-.244 |
Sig. (2-tailed) |
.578 |
.000 |
.010 |
|
N |
110 |
110 |
110 |
|
healthcare_apps |
Pearson Correlation |
-.224a |
-.221 |
-.303 |
Sig. (2-tailed) |
.037 |
.039 |
.004 |
|
N |
87 |
87 |
87 |
|
game_based |
Pearson Correlation |
.159a |
-.274 |
-.204 |
Sig. (2-tailed) |
.131 |
.008 |
.051 |
|
N |
92 |
92 |
92 |
|
search_tool |
Pearson Correlation |
.187a |
-.094** |
.053** |
Sig. (2-tailed) |
.068 |
.364 |
.605 |
|
N |
96 |
96 |
96 |
|
social_networking |
Pearson Correlation |
-.223a |
.247 |
.215 |
Sig. (2-tailed) |
.024 |
.012 |
.029 |
|
N |
103 |
103 |
103 |
|
news_apps |
Pearson Correlation |
.145a |
.031 |
.074 |
Sig. (2-tailed) |
.140 |
.751 |
.455 |
|
N |
105 |
105 |
105 |
|
Using |
Pearson Correlation |
.218a |
.475 |
.512 |
Sig. (2-tailed) |
.022 |
.000 |
.000 |
|
N |
110 |
110 |
110 |
|
monitoring_health |
Pearson Correlation |
.261* |
-.025* |
.006* |
Sig. (2-tailed) |
.005 |
.797 |
.950 |
|
N |
112 |
112 |
112 |
|
manage_medication |
Pearson Correlation |
.306** |
-.009** |
-.042 |
Sig. (2-tailed) |
.001 |
.921 |
.654 |
|
This correlation data chart is correlating sex, age and experience of people with the other statistical variables lined into the left side of the chart.
Case Processing Summary |
||
N |
Percent |
|
Included |
114 |
100.0% |
Excluded |
0 |
0.0% |
Total |
114 |
100.0% |
After analyzing all possible given data the Automatic Linear Modeling shows the above case processing summary which included the all 114 people taken in the survey (17).
The Model summary of the analysis shows the way all the result of the data analysis based on every aspect (6).
The discussion part is divided in two different analyses. The Analysis of variance (ANOVA) and Partial Correlation Method is specifically used to discuss the topic of using health care application in smart phone.
Through Analysis of variance (ANOVA) a certain specific procedure to analyze the particular differences between means of each group and the related associated variance. In this analysis the group means help to elaborate the discussion section in a particular and statistical way (13). To relate several parameters under a section it can be said the total statistical part is a little complicated. However, it is very essential for understanding the different responses related with the different people. The variables and the group means helps to understand every aspects of the data part related with the apps. Through the unanimous discussion of the output of the several parameters a conclusive point can be determined. The interrelation of the given data has extracted the importance of the application which can provide medical health care through smart phone at any point or any situation (2). Analysis of variance (ANOVA) which is purposefully used to show the sum of squares, df, mean square and the f of the given parameters like smart phone, the given platform, the usage of per hours, the health care app, game based app, the usage of search tool apps, the social networking apps, new apps, the using apps, the monitoring health app, manage medication, consulting healthcare professionals, the different medicines, taking medicines, the forget mentality the side effects, feel well enough, the lack of time no improvement, lack of understanding, the doses strategy to take, helping adherence, adherence to medication recommending external advice, promoted by professional, usage by the public aid medication adherence, ease of use and security reliability sex, age and experience of people. All the sufficient data and analysis are supporting for the application to be used among the people through smart phone (16).
Partial correlation is used to measure the specific degree of association between two random variables. In this case the essence of this specific method is quite important to show the importance of the app in the life of common people (8). For the essential statistics needed to sum up the process to obtain the result are very vital for the very cause. Through this method the number of surveyor, Pearson Correlation and significance is concluded of several variables given in the research such as smart phone, the given platform, the usage of per hours, the health care app, game based app, the usage of search tool apps, the social networking apps, new apps, the using apps, the monitoring health app, manage medication, consulting healthcare professionals, the different medicines, taking medicines, the forget mentality the side effects, feel well enough, the lack of time no improvement, lack of understanding, the doses strategy to take, helping adherence, adherence to medication recommending external advice, promoted by professional, usage by the public aid medication adherence, ease of use and security reliability sex, age and experience of people. The results also help to achieve to a certain point to define whether it is important for people to accept the mobile application which provides support heath care (20).
Automatic Linear Modeling generally ensures the processing summary of the whole method supporting the decision. The model summary shows the accuracy is 58.4 percent which is quite good response respective of the analysis done on people. These parameters and statistical logistics are also supporting for the use of the heath care application to a certain extent (14).
As per the design of the questionnaire, it is prepared in such way that it contains the opinions of the pharmacists in support with the medication application. Out of 250 questionnaires, the pharmacies community of Liverpool provided their specific and valuable views. Mainly the important sections established in the questionnaires are the medication adherence, self-care, background status, demographic data and usability of the application.
Questionnaires |
Results |
How many of the patients use Smart Phone? |
It has been found from the analysis that 58% of the patients uses smart phone. But most of them are not brand concern because the brand does not effects the use of health care application |
Do you use the application for at least 4 hours a day ? |
We figured out that almost 32 percent of the patients that are using these application for medical help, often uses this for more than 4 hours |
Does the health care app provide effective search tool? |
The health care app that is used by most of the patients in today’s world. Out of the total respondents only few of them stated that the app provides effective search tool options |
Do the health app supports the social media networking? |
It was found out that a huge number of people use this health care app as it supports social media networking techniques. Nearly 42 percent of the respondents like the above technique that was figured out in the survey |
Does the app also support different medical related news application? |
Nearly 65% of the people are in love with the medical application that is supported in their Smartphone as it also provide several news application that I loved by almost 70% of the people using this app |
Does the app provide effective monitoring health facility? |
Most of the users that are using the health care application feels that the app provides quite effective monitoring facilities that help them in all respect. Almost 51% of the people believe so out of the total respondents that participated in the feedback process |
Is the app successful in managing the medication procedure? |
The Medicare health app is quite effective in maintaining and managing the medication procedure as there are very few respondents that feel this app to effective enough |
Does the app incorporate consultation of doctors? |
Most of the users of this app are quite happy with the consultation feature of this app as they receive all the effective feedbacks from the doctors that is much more important than anything else. |
Does the app include different consulting healthcare professionals? |
Nearly 70% of the respondents feels that this health care application is quite helpful for them as it provides them with all the important tips of the healthcare professionals |
Does the app provide the specifications of different medicines? |
Many respondents in the survey feel that the app to be quite effective as it provides all the specifications of the medical that is required by the patient. |
Does the application state the side effect of different medicines? |
The maximum number of respondents like the application for this feature as it explains all the side effects that goes along with the medicine |
Does the patient feel good enough after using the application |
Most of the respondents feel the application to be very helpful and at the same time quite information that provides them security and safety in all aspects |
Does the app run successfully in all smart phones? |
There are many people that are using this application. Many of the respondents stated this application to be user-friendly as it is installed in almost every type of Smartphone. |
Do the patients feel comfortable using the application? |
Most of the patients that uses this application is above 40 years age and hence most of them feel it difficult to use this app irrespective of an user friendly approach |
Is the app helpful to adheres medication to the patients? |
About 40 percent of the patients believe that this app is quite helpful in adhering medication for the patients in all respect |
Does other medical professional suggest other external devices? |
There are very few people that are using the app has stated the app which provides many other external devices |
How many of you feel the application to be effective? |
Nearly 70% of the people that are using this medical application feel the application to be quite effective for medical purpose |
Does u feel that the app provides reliability and security? |
Only a few percentages of people fill that the medical application provider better security and reliability to the sources. |
Does the application provide adequate and regulated information? |
Nearly 70% of the people feel that the medical application provide the patient with types of regulated and adequate information |
Does the application help the patients with regular tips and advices? |
Most of the patients feel that the application provides the user with regular updates and advices on medical techniques |
It has been found from the analysis that 58% of the patients uses smart phone. But most of them are not brand concern because the brand does not affects the use of health care application
We figured out that almost 32 percent of the patients that are using these applications for medical help often use this for more than 4 hours. The health care app that is used by most of the patients in today’s world. Out of the total respondents only few of them stated that the app provides effective search tool options. It was found out that a huge number of people use this health care app as it supports social media networking techniques. Nearly 42 percent of the respondents like the above technique that was figured out in the survey. Nearly 65% of the people are in love with the medical application that is supported in their Smartphone as it also provide several news application that I loved by almost 70% of the people using this app. Most of the users that are using the health care application feels that the app provides quite effective monitoring facilities that help them in all respect. Almost 51% of the people believe so out of the total respondents that participated in the feedback process. The Medicare health app is quite effective in maintaining and managing the medication procedure as there are very few respondents that feel this app to effective enough. Most of the users of this app are quite happy with the consultation feature of this app as they receive all the effective feedbacks from the doctors that is much more important than anything else. Nearly 70% of the respondents feel that this health care application is quite helpful for them as it provides them with all the important tips of the healthcare professionals. Many respondents in the survey feel that the app to be quite effective as it provides all the specifications of the medical that is required by the patient. The maximum number of respondents like the application for this feature as it explains all the side effects that go along with the medicine. Most of the respondents feel the application to be very helpful and at the same time quite information that provides them security and safety in all aspects. There are many people that are using this application. Many of the respondents stated this application to be user-friendly as it is installed in almost every type of Smartphone. Most of the patients that uses this application is above 40 years age and hence most of them feel it difficult to use this app irrespective of an user friendly approach. About 40 percent of the patients believe that this app is quite helpful in adhering medication for the patients in all respect. There are very few people that are using the app has stated the app which provides many other external devices. Nearly 70% of the people that are using this medical application feel the application to be quite effective for medical purpose. Only a few percentages of people fill that the medical application provider better security and reliability to the sources. Nearly 70% of the people feel that the medical application provides the patient with types of regulated and adequate information. Most of the patients feel that the application provides the user with regular updates and advices on medical techniques. Now if we come in to the result part the Analysis of variance (ANOVA) and the Partial correlation suggests many definite proportion of the result that is shown in the chart. Broader analysis of result is done in the chart section and that showed most of the sections out of the five such as medication adherence, self-care, background status, demographic data and usability of the application giving out positive sort of results by the pharmacies community to implement the application for the Medicare sector. Lots of complicated results have also come out from the process and many of them does not need to be taken under consideration as the result has bare minimum effect on the whole process. Also the model summary shows the accuracy is 58.4 percent which is a moderate result summery though the number is above 50 percent which shows positivity to the most of the 250 questionnaires.
Conclusion
As per the analysis and the discussion part it has to be ensured that the healthcare app in the smart phone is a very good technology for mankind. The common people in the busy and hectic sort of life style will find the application more suitable to use. As the data and charts statistically shows the preference of smart phone holder with using the specific apps along with other apps (15). Also by discussing the efficiency of taking medicines at times, the forgetful nature of common people to take medicines and check health related problems the Medicare app will be very important in the near future. Additionally human are depending more and more on technology and gadgets. Therefore it will be easy to maintain the Medicare help in the hectic life. Also the essentiality of measuring many aspects of body is providing support for the application. Monitoring health through the app will prove a success as the specific app can check several physical data like heart beat monitoring, blood pressure, analyzing gasping states of body, excess stress level as well as several reminders like taking medicines, measuring distances covered by walking and running, importance of many biological issues affecting the human body in several circumstances. Following to all of the survey work and the statistical analysis and the discussion portion one have to certainly believe the necessity of the app relating to health care. According to the data it is quite clear that the issuing healthcare application in the smart phone will definitely show the possibilities of the app in several lives saving aspect too. As the developing technology has taken the health care sector to a possible height similarly the possibilities are quite clear that the particular smart phone app has every chance to make a vital impact by guiding human life to maintain a good habit to maintain a healthy life style. The human life will be certainly benefited by using the apps as it can add much important information regarding to the health in an electrical way. Every part of the statistical part is providing support to the possibilities. As in a hectic working life human is used to go through a quite stressful life therefore the possibilities of physical attention is becoming lesser important in the life. In this situation the app can be proved to be most essential support system for human life. However the application can supply most of the vital information to lead a healthy life. The usefulness of it is quite significant that can be rest assured. Therefore after all the analysis it can be concluded that using health care application in smart phone is really an essential suggestion.
References
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