Predicting Depression Among Type-2 Diabetic Patients Using Federated Learning

Abstract

Depression being a common and dangerous mental health condition could have a significant impact on a person's quality of life. It may result in depressive and gloomy feelings along with a loss of interest in onceenjoyable activities. Depression is considered a leading global cause of impairment that affects people at various stages of age, ethnicities, and socioeconomic status. It may cause negative effects on a person’s physical and emotional well-being like reduced motivation, energy, and appetite. In this paper, we have presented a Federated Learning-based framework to predict depression in patients with type 2 diabetes. Type 2 diabetes frequently coexists with depression, which can hurt treatment outcomes and raise medical expenses. The objective of this paper is to create a Federated Learning-based framework to predict the impact of depression in causing type-II diabetes by analyzing patient’s data including laboratory results, medical history, and demographic information. To forecast the likelihood of depression in patients with type 2 diabetes. Analysis has been performed using a freely available dataset of Type-II diabetes from Kaggle and an accuracy of 97% has been achieved.

Authors and Affiliations

Rabia Tehseen, Waseeq Haider, Uzma Omer, Nosheen Qamar, Nosheen Sabahat, Rubab Javaid

Keywords

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  • EP ID EP760584
  • DOI -
  • Views 12
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How To Cite

Rabia Tehseen, Waseeq Haider, Uzma Omer, Nosheen Qamar, Nosheen Sabahat, Rubab Javaid (2024). Predicting Depression Among Type-2 Diabetic Patients Using Federated Learning. International Journal of Innovations in Science and Technology, 6(4), -. https://europub.co.uk./articles/-A-760584