Deep Learning Body Region Classification of MRI and CT examinations
Philippe Raffy, Jean-Fran\c{c}ois Pambrun, Ashish Kumar, David Dubois,, Jay Waldron Patti, Robyn Alexandra Cairns, Ryan Young

TL;DR
This study develops a CNN-based classifier that accurately labels body regions in MRI and CT images, aiding standardized data annotation across diverse healthcare settings.
Contribution
The paper introduces a deep learning model capable of high-accuracy body region classification in MRI and CT scans, validated on multi-institutional datasets with diverse patient demographics.
Findings
Achieved 91.9% accuracy for CT and 94.2% for MRI.
Robust performance across all body regions and confounding factors.
Validated on data from 27 institutions with diverse patient populations.
Abstract
Standardized body region labelling of individual images provides data that can improve human and computer use of medical images. A CNN-based classifier was developed to identify body regions in CT and MRI. 17 CT (18 MRI) body regions covering the entire human body were defined for the classification task. Three retrospective databases were built for the AI model training, validation, and testing, with a balanced distribution of studies per body region. The test databases originated from a different healthcare network. Accuracy, recall and precision of the classifier was evaluated for patient age, patient gender, institution, scanner manufacturer, contrast, slice thickness, MRI sequence, and CT kernel. The data included a retrospective cohort of 2,934 anonymized CT cases (training: 1,804 studies, validation: 602 studies, test: 528 studies) and 3,185 anonymized MRI cases (training: 1,911…
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