학술논문

Detecting of a Patient's Condition From Clinical Narratives Using Natural Language Representation
Document Type
Periodical
Source
IEEE Open Journal of Engineering in Medicine and Biology IEEE Open J. Eng. Med. Biol. Engineering in Medicine and Biology, IEEE Open Journal of. 3:142-149 2022
Subject
Bioengineering
Components, Circuits, Devices and Systems
Computing and Processing
Medical diagnostic imaging
Representation learning
Performance evaluation
Hospitals
Machine learning
Heart
Deep learning
Natural language processing
Clinical diagnosis
Feature extraction
Clinical natural language processing
cardiac failure
machine learning
imbalance learning
feature selection
Language
ISSN
2644-1276
Abstract
The rapid progress in clinical data management systems and artificial intelligence approaches enable the era of personalized medicine. Intensive care units (ICUs) are ideal clinical research environments for such development because they collect many clinical data and are highly computerized. Goal: We designed a retrospective clinical study on a prospective ICU database using clinical natural language to help in the early diagnosis of heart failure in critically ill children. Methods: The methodology consisted of empirical experiments of a learning algorithm to learn the hidden interpretation and presentation of the French clinical note data. This study included 1386 patients' clinical notes with 5444 single lines of notes. There were 1941 positive cases (36% of total) and 3503 negative cases classified by two independent physicians using a standardized approach. Results: The multilayer perceptron neural network outperforms other discriminative and generative classifiers. Consequently, the proposed framework yields an overall classification performance with 89% accuracy, 88% recall, and 89% precision. Conclusions: This study successfully applied learning representation and machine learning algorithms to detect heart failure in a single French institution from clinical natural language. Further work is needed to use the same methodology in other languages and institutions.