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Improving clinical decision support through interpretable machine learning and error handling in electronic health records.

Publication ,  Journal Article
Arora, M; Mortagy, H; Dwarshuis, N; Wang, J; Yang, P; Holder, AL; Gupta, S; Kamaleswaran, R
Published in: J Am Med Inform Assoc
January 1, 2026

OBJECTIVE: To develop an electronic medical record (EMR) data processing tool that confers clinical context to machine learning (ML) algorithms for error handling, bias mitigation, and interpretability. MATERIALS AND METHODS: We present Trust-MAPS, an algorithm that translates clinical domain knowledge into high-dimensional, mixed-integer programming models that capture physiological and biological constraints on clinical measurements. EMR data are projected onto this constrained space, effectively bringing outliers to fall within a physiologically feasible range. We then compute the distance of each data point from the constrained space modeling healthy physiology to quantify deviation from the norm. These distances, termed "trust-scores," are integrated into the feature space for downstream ML applications. We demonstrate the utility of Trust-MAPS by training a binary classifier for early sepsis prediction on data from the 2019 PhysioNet Computing in Cardiology Challenge, using the XGBoost algorithm and applying SMOTE for overcoming class-imbalance. RESULTS: The Trust-MAPS framework shows desirable behavior in handling potential errors and boosting predictive performance. We achieve an area under the receiver operating characteristic curve of 0.91 (95% CI, 0.89-0.92) for predicting sepsis 6 hours before onset-a marked 15% improvement over a baseline model trained without Trust-MAPS. DISCUSSIONS: Downstream classification performance improves after Trust-MAPS preprocessing, highlighting the bias reducing capabilities of the error-handling projections. Trust-scores emerge as clinically meaningful features that not only boost predictive performance for clinical decision support tasks but also lend interpretability to ML models. CONCLUSION: This work is the first to translate clinical domain knowledge into mathematical constraints, model cross-vital dependencies, and identify aberrations in high-dimensional medical data. Our method allows for error handling in EMR and confers interpretability and superior predictive power to models trained for clinical decision support.

Duke Scholars

Published In

J Am Med Inform Assoc

DOI

EISSN

1527-974X

Publication Date

January 1, 2026

Volume

33

Issue

1

Start / End Page

123 / 132

Location

England

Related Subject Headings

  • Sepsis
  • Medical Informatics
  • Machine Learning
  • Humans
  • Electronic Health Records
  • Decision Support Systems, Clinical
  • Algorithms
  • 46 Information and computing sciences
  • 42 Health sciences
  • 32 Biomedical and clinical sciences
 

Citation

APA
Chicago
ICMJE
MLA
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Arora, M., Mortagy, H., Dwarshuis, N., Wang, J., Yang, P., Holder, A. L., … Kamaleswaran, R. (2026). Improving clinical decision support through interpretable machine learning and error handling in electronic health records. J Am Med Inform Assoc, 33(1), 123–132. https://doi.org/10.1093/jamia/ocaf058
Arora, Mehak, Hassan Mortagy, Nathan Dwarshuis, Jeffrey Wang, Philip Yang, Andre L. Holder, Swati Gupta, and Rishikesan Kamaleswaran. “Improving clinical decision support through interpretable machine learning and error handling in electronic health records.J Am Med Inform Assoc 33, no. 1 (January 1, 2026): 123–32. https://doi.org/10.1093/jamia/ocaf058.
Arora M, Mortagy H, Dwarshuis N, Wang J, Yang P, Holder AL, et al. Improving clinical decision support through interpretable machine learning and error handling in electronic health records. J Am Med Inform Assoc. 2026 Jan 1;33(1):123–32.
Arora, Mehak, et al. “Improving clinical decision support through interpretable machine learning and error handling in electronic health records.J Am Med Inform Assoc, vol. 33, no. 1, Jan. 2026, pp. 123–32. Pubmed, doi:10.1093/jamia/ocaf058.
Arora M, Mortagy H, Dwarshuis N, Wang J, Yang P, Holder AL, Gupta S, Kamaleswaran R. Improving clinical decision support through interpretable machine learning and error handling in electronic health records. J Am Med Inform Assoc. 2026 Jan 1;33(1):123–132.
Journal cover image

Published In

J Am Med Inform Assoc

DOI

EISSN

1527-974X

Publication Date

January 1, 2026

Volume

33

Issue

1

Start / End Page

123 / 132

Location

England

Related Subject Headings

  • Sepsis
  • Medical Informatics
  • Machine Learning
  • Humans
  • Electronic Health Records
  • Decision Support Systems, Clinical
  • Algorithms
  • 46 Information and computing sciences
  • 42 Health sciences
  • 32 Biomedical and clinical sciences