Machine learning for psychiatric patient triaging: an investigation of cascading classifiers

Vivek Kumar Singh, Utkarsh Shrivastava, Lina Bouayad, Balaji Padmanabhan, Anna Ialynytchev, Susan K Schultz

Research output: Contribution to journalArticlepeer-review

Abstract

Objective
Develop an approach, One-class-at-a-time, for triaging psychiatric patients using machine learning on textual patient records. Our approach aims to automate the triaging process and reduce expert effort while providing high classification reliability.
Materials and Methods
The One-class-at-a-time approach is a multistage cascading classification technique that achieves higher triage classification accuracy compared to traditional multiclass classifiers through 1) classifying one class at a time (or stage), and 2) identification and application of the highest accuracy classifier at each stage. The approach was evaluated using a unique dataset of 433 psychiatric patient records with a triage class label provided by “I2B2 challenge,” a recent competition in the medical informatics community.
Results
The One-class-at-a-time cascading classifier outperformed state-of-the-art classification techniques with overall classification accuracy of 77% among 4 classes, exceeding accuracies of existing multiclass classifiers. The approach also enabled highly accurate classification of individual classes—the severe and mild with 85% accuracy, moderate with 64% accuracy, and absent with 60% accuracy.
Discussion
The triaging of psychiatric cases is a challenging problem due to the lack of clear guidelines and protocols. Our work presents a machine learning approach using psychiatric records for triaging patients based on their severity condition.
Conclusion
The One-class-at-a-time cascading classifier can be used as a decision aid to reduce triaging effort of physicians and nurses, while providing a unique opportunity to involve experts at each stage to reduce false positive and further improve the system’s accuracy.
Original languageAmerican English
JournalJournal of the American Medical Informatics Association
Volume25
DOIs
StatePublished - Nov 1 2018
Externally publishedYes

Keywords

  • I2B2 challenge
  • cascading classification
  • decision aid
  • ensemble algorithms
  • text mining
  • triage

Disciplines

  • Computer Sciences
  • Medicine and Health Sciences
  • Artificial Intelligence and Robotics

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