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StackDPP: Stacking-Based Explainable Classifier for Depression Prediction and Finding the Risk Factors among

Fahad Ahmed Al-Zahrani1, Lway Faisal Abdulrazak2, Md Mamun Ali3,4

  • 1Computer Engineering Department, Umm Al-Qura University, Mecca 24381, Saudi Arabia.

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This study introduces a machine learning model to predict depression in physicians, identifying key risk factors. The StackDPP model achieved high accuracy, aiding mental health professionals in treatment decisions.

Keywords:
StackDPPdepression modelmental healthphysicians in Bangladeshrisk factors

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Area of Science:

  • Medical Informatics
  • Computational Psychiatry
  • Machine Learning in Healthcare

Background:

  • Physician mental health is a critical concern globally.
  • Identifying depression risk factors among physicians is challenging.
  • Accurate prediction models are needed for timely intervention.

Purpose of the Study:

  • To develop a machine learning-based predictive model for physician depression.
  • To identify significant risk factors associated with physician depression.
  • To evaluate the performance of various classification algorithms.

Main Methods:

  • Collected and preprocessed physician health data.
  • Utilized seven classification algorithms, including a novel stacking ensemble classifier (StackDPP).
  • Tested models on 10 sub-datasets to optimize attribute selection.

Main Results:

  • The proposed StackDPP model demonstrated superior performance across all datasets.
  • Highest accuracy (0.962581) was achieved using all attributes.
  • The top 20 attributes yielded accuracy (0.96129) comparable to using all attributes.
  • Significant risk factors for physician depression were identified.

Conclusions:

  • The StackDPP model effectively predicts depression levels in physicians.
  • The model accurately identifies crucial risk factors for depression.
  • Findings support enhanced treatment and therapy planning for physician mental health professionals.