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Temporal Supervised Contrastive Learning for Modeling Patient Risk Progression.

Shahriar Noroozizadeh1, Jeremy C Weiss2, George H Chen1

  • 1Carnegie Mellon University, Pittsburgh, PA, USA.

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|March 29, 2024
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Summary

This study introduces a novel supervised contrastive learning framework for patient time series analysis. The method accurately predicts patient outcomes and tracks disease progression by learning meaningful data embeddings.

Keywords:
contrastive learningnearest neighborstime series analysis

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Area of Science:

  • Machine Learning
  • Medical Informatics
  • Time Series Analysis

Background:

  • Predicting patient outcomes over time is crucial in healthcare.
  • Existing methods struggle with the dynamic nature of patient data.
  • Clinical data presents unique challenges for standard machine learning techniques.

Purpose of the Study:

  • To develop a novel supervised contrastive learning framework for patient time series.
  • To learn embedding representations that capture temporal dependencies and outcome probabilities.
  • To improve the accuracy of predicting patient outcomes and tracking disease progression.

Main Methods:

  • Proposed a supervised contrastive learning framework for patient time series.
  • Learned embedding representations where similar outcomes are close in space.
  • Employed a nearest neighbor pairing mechanism in raw feature space as an alternative to data augmentation.
  • Validated the approach on predicting mortality in septic patients (MIMIC-III) and cognitive impairment progression (ADNI).

Main Results:

  • Outperformed state-of-the-art baselines in predicting mortality and cognitive impairment progression.
  • Successfully recovered synthetic dataset embedding structures, a feat not achieved by baselines.
  • Demonstrated the critical role of the nearest neighbor pairing mechanism through ablation studies.

Conclusions:

  • The proposed framework effectively learns patient time series embeddings for outcome prediction.
  • Nearest neighbor pairing is a vital component for handling clinical tabular data in contrastive learning.
  • This approach offers a promising direction for dynamic patient outcome prediction and disease tracking.