RadioLOGIC, a healthcare model for processing electronic health records and decision-making in breast disease

Tianyu Zhang, Tao Tan*, Xin Wang, Yuan Gao, Luyi Han, Luuk Balkenende, Anna D'Angelo, Lingyun Bao, Hugo M Horlings, Jonas Teuwen, Regina G H Beets-Tan, Ritse M Mann

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Digital health data used in diagnostics, patient care, and oncology research continue to accumulate exponentially. Most medical information, and particularly radiology results, are stored in free-text format, and the potential of these data remains untapped. In this study, a radiological repomics-driven model incorporating medical token cognition (RadioLOGIC) is proposed to extract repomics (report omics) features from unstructured electronic health records and to assess human health and predict pathological outcome via transfer learning. The average accuracy and F1-weighted score for the extraction of repomics features using RadioLOGIC are 0.934 and 0.934, respectively, and 0.906 and 0.903 for the prediction of breast imaging-reporting and data system scores. The areas under the receiver operating characteristic curve for the prediction of pathological outcome without and with transfer learning are 0.912 and 0.945, respectively. RadioLOGIC outperforms cohort models in the capability to extract features and also reveals promise for checking clinical diagnoses directly from electronic health records.
Original languageEnglish
Article number101131
Number of pages15
JournalCell Reports Medicine
Volume4
Issue number8
DOIs
Publication statusPublished - 15 Aug 2023

Keywords

  • artificial intelligence
  • breast cancer
  • decision support
  • digital health data
  • electronic health records
  • radiology
  • repomics
  • Humans
  • Electronic Health Records
  • ROC Curve
  • Radiology
  • Breast Diseases
  • Delivery of Health Care

Cite this