Use of M-health Application to Figure Out Post-natal Depression, an Evidence-based Study
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Tarih
2023
Yazarlar
Dergi Başlığı
Dergi ISSN
Cilt Başlığı
Yayıncı
Journal of Advances in Medicine and Medical Research
Erişim Hakkı
info:eu-repo/semantics/openAccess
Özet
Background: Post-natal depression is a clinical condition that may go undiscovered. A common mental health issue and one of the main factors contributing to mother sorrow and poor health is postpartum depression (PPD). The disease is prevalent on a global scale in a range of 10 to 15%. The high-risk phase, the first four to six weeks, is when symptoms typically manifest. However, it could appear up to a year after birth. Traditional depressed symptoms like mood swings, crying fits, losing consideration for a kid, despite suicide thoughts are signs. PPD impacts growth and development but also the mother's health. In the past few years, postpartum depression research has gained momentum. The illness and its effects are still largely unknown to the General public. Furthermore, not many people are aware of the PPD risk factors. There hasn't been much research done on the variations in symptoms and suitable preventive actions between cultures. PPD risk factors include obstetrical and podiatric variables in addition to some that are comparable to those for classic depression. The evolution of a clinical issue needs medical attention, where study-proven results suggested great compassion, efficient and satisfactory precision in outcomes especially prompt accomplish, simple to elucidate, in cultural terms appropriate, and economical. The objective of this study, to generate organizational paradigms for identifying the risk of postnatal depression after a week of child delivery, accordingly permit quick interruption, and also, to create a digital health application for the latest platform such as (Google Health Studies, Mountain View, Medication Management, Point-of-Care Diagnostics) along with the elite implementation for both pregnant mothers and physician that desire to observe their patient’s test. Methodology: The study was a prospective cohort study. A set of prognostic paragons used for computing the chance of post-natal depression was utilized device acquisition capabilities and record evidence practically PPD mothers gathered from different hospitals. The analysis was implemented through a hold-out technique. A simple scheme diagram and framework for organizing the figure. Idol picture portrait (IPO) of the mobile health application was tracked. Results: The results showed that the study of Naive Bayes demonstrated the significant equilibrium among specificity and sensitivity through the prognostic paradigm for post-natal depression, after a few days of delivery. It was unified toward the clinical verdict assist method for the Android m-application. Unique strategy can permit the premature prognostic and identification of post-natal depression so long as it satisfies the requirements of a potent screening trial with a great degree of specificity and sensitivity which is rapid to execute, simple to interact with, ethically perceptive, sympathetic, and economical.
Açıklama
Anahtar Kelimeler
Post-natal depression, machine learning, pattern recognition, m health, cognitive behavioral therapy, android application
Kaynak
Journal of Advances in Medicine and Medical Research
WoS Q Değeri
Scopus Q Değeri
Cilt
35
Sayı
24