Conception, Development and Validation of Classification Methods for Coding Support of Rare Diseases Using Artificial Intelligence

Autor: Richard, Noll, Mirjam, Minor, Alexandra, Berger, Lukas, Naab, Matthias, Bay, Holger, Storf, Jannik, Schaaf
Rok vydání: 2022
Předmět:
Zdroj: Studies in health technology and informatics. 295
ISSN: 1879-8365
Popis: Automated coding of diseases can support hospitals in the billing of inpatient cases with the health insurance funds. This paper describes the implementation and evaluation of classification methods for two selected Rare Diseases. Different classifiers of an off-the-shelf system and an own application are applied in a supervised learning process and comparatively examined for their suitability and reliability. Using Natural Language Processing and Machine Learning, disease entities are recognized from unstructured historical patient records and new billing cases are coded automatically. The results of the performed classifications show that even with small datasets (≤ 200), high correctness (F1 score ∼0.8) can be achieved in predicting new cases.
Databáze: OpenAIRE