AUTHOR=Delrieu Lidia , Blanc Damien , Bouhamama Amine , Reyal Fabien , Pilleul Frank , Racine Victor , Hamy Anne Sophie , Crochet Hugo , Marchal Timothée , Heudel Pierre Etienne TITLE=Automatic deep learning method for third lumbar selection and body composition evaluation on CT scans of cancer patients JOURNAL=Frontiers in Nuclear Medicine VOLUME=3 YEAR=2024 URL=https://www.frontiersin.org/journals/nuclear-medicine/articles/10.3389/fnume.2023.1292676 DOI=10.3389/fnume.2023.1292676 ISSN=2673-8880 ABSTRACT=Introduction

The importance of body composition and sarcopenia is well-recognized in cancer patient outcomes and treatment tolerance, yet routine evaluations are rare due to their time-intensive nature. While CT scans provide accurate measurements, they depend on manual processes. We developed and validated a deep learning algorithm to automatically select and segment abdominal muscles [SM], visceral fat [VAT], and subcutaneous fat [SAT] on CT scans.

Materials and Methods

A total of 352 CT scans were collected from two cancer centers. The detection of the third lumbar vertebra and three different body tissues (SM, VAT, and SAT) were annotated manually. The 5-fold cross-validation method was used to develop the algorithm and validate its performance on the training cohort. The results were validated on an external, independent group of CT scans.

Results

The algorithm for automatic L3 slice selection had a mean absolute error of 4 mm for the internal validation dataset and 5.5 mm for the external validation dataset. The median DICE similarity coefficient for body composition was 0.94 for SM, 0.93 for VAT, and 0.86 for SAT in the internal validation dataset, whereas it was 0.93 for SM, 0.93 for VAT, and 0.85 for SAT in the external validation dataset. There were high correlation scores with sarcopenia metrics in both internal and external validation datasets.

Conclusions

Our deep learning algorithm facilitates routine research use and could be integrated into electronic patient records, enhancing care through better monitoring and the incorporation of targeted supportive measures like exercise and nutrition.