Delrieu Lidia, Blanc Damien, Bouhamama Amine, Reyal Fabien, Pilleul Frank, Racine Victor, Hamy Anne Sophie, Crochet Hugo, Marchal Timothée, Heudel Pierre Etienne
Residual Tumor & Response to Treatment Laboratory, RT2Lab, Translational Research Department, INSERM, U932 Immunity and Cancer, Institut Curie, Paris University, Paris, France.
QuantaCell, Pessac, France.
Front Nucl Med. 2024 Jan 10;3:1292676. doi: 10.3389/fnume.2023.1292676. eCollection 2023.
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.
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.
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.
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.
身体成分和肌肉减少症对癌症患者的预后和治疗耐受性的重要性已得到充分认识,但由于其耗时性,常规评估很少进行。虽然CT扫描能提供准确的测量结果,但依赖于手动操作。我们开发并验证了一种深度学习算法,用于在CT扫描上自动选择和分割腹部肌肉(SM)、内脏脂肪(VAT)和皮下脂肪(SAT)。
从两个癌症中心收集了共352份CT扫描图像。手动标注第三腰椎以及三种不同身体组织(SM、VAT和SAT)。采用5折交叉验证方法开发算法,并在训练队列上验证其性能。结果在外部独立的CT扫描组上进行了验证。
自动选择L3切片的算法在内部验证数据集上的平均绝对误差为4毫米,在外部验证数据集上为5.5毫米。在内部验证数据集中,身体成分的中位DICE相似系数对于SM为0.94,对于VAT为0.93,对于SAT为0.86;而在外部验证数据集中,对于SM为0.93,对于VAT为0.93,对于SAT为0.85。在内部和外部验证数据集中,与肌肉减少症指标均有较高的相关性得分。
我们的深度学习算法便于常规研究使用,并可整合到电子病历中,通过更好的监测以及纳入运动和营养等有针对性的支持措施来改善护理。