2024
DOI: 10.14569/ijacsa.2024.0150481
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Enhancing the Diagnosis of Depression and Anxiety Through Explainable Machine Learning Methods

Mai Marey,
Dina Salem,
Nora El Rashidy
et al.

Abstract: Diagnosing depression and anxiety involves various methods, including referenda-based approaches that may lack accuracy. However, machine learning has emerged as a promising approach to address these limitations and improve diagnostic accuracy. In this scientific paper, we present a study that utilizes a digital dataset to apply machine learning techniques for diagnosing psychological disorders. The study employs numerical, striatum, and mathematical analytic methodologies to extract dataset features. The Recu… Show more

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