Center for Regenerative Medicine, The Research Institute at Nationwide Children's Hospital, 575 Children's Crossroad, WB4133, Columbus, OH, 43215, USA.
Center for Biostatistics, The Ohio State University, Columbus, OH, USA.
Eur Radiol. 2023 Sep;33(9):6599-6607. doi: 10.1007/s00330-023-09587-z. Epub 2023 Mar 29.
The objective of this study was to translate a deep learning (DL) approach for semiautomated analysis of body composition (BC) measures from standard of care CT images to investigate the prognostic value of BC in pediatric, adolescent, and young adult (AYA) patients with lymphoma.
This 10-year retrospective, single-site study of 110 pediatric and AYA patients with lymphoma involved manual segmentation of fat and muscle tissue from 260 CT imaging datasets obtained as part of routine imaging at initial staging and first therapeutic follow-up. A DL model was trained to perform semiautomated image segmentation of adipose and muscle tissue. The association between BC measures and the occurrence of 3-year late effects was evaluated using Cox proportional hazards regression analyses.
DL-guided measures of BC were in close agreement with those obtained by a human rater, as demonstrated by high Dice scores (≥ 0.95) and correlations (r > 0.99) for each tissue of interest. Cox proportional hazards regression analyses revealed that patients with elevated subcutaneous adipose tissue at baseline and first follow-up, along with patients who possessed lower volumes of skeletal muscle at first follow-up, have increased risk of late effects compared to their peers.
DL provides rapid and accurate quantification of image-derived measures of BC that are associated with risk for treatment-related late effects in pediatric and AYA patients with lymphoma. Image-based monitoring of BC measures may enhance future opportunities for personalized medicine for children with lymphoma by identifying patients at the highest risk for late effects of treatment.
• Deep learning-guided CT image analysis of body composition measures achieved high agreement level with manual image analysis. • Pediatric patients with more fat and less muscle during the course of cancer treatment were more likely to experience a serious adverse event compared to their clinical counterparts. • Deep learning of body composition may add value to routine CT imaging by offering real-time monitoring of pediatric, adolescent, and young adults at high risk for late effects of cancer treatment.
本研究旨在将深度学习(DL)方法从标准护理 CT 图像中自动分析身体成分(BC)测量值,以研究 BC 在儿科、青少年和年轻成人(AYA)淋巴瘤患者中的预后价值。
这是一项回顾性、单中心研究,纳入了 110 名儿科和 AYA 淋巴瘤患者,共 260 例 CT 影像学数据集,这些数据来自初始分期和首次治疗随访期间常规影像学检查。使用 DL 模型对脂肪和肌肉组织进行半自动图像分割。采用 Cox 比例风险回归分析评估 BC 测量值与 3 年晚期效应发生的相关性。
DL 指导的 BC 测量值与人工评分者获得的结果高度一致,每个感兴趣的组织的 Dice 评分(≥0.95)和相关性(r>0.99)均较高。Cox 比例风险回归分析显示,与同龄人相比,基线和首次随访时皮下脂肪组织升高、首次随访时骨骼肌体积较低的患者发生晚期效应的风险增加。
DL 能够快速准确地定量分析 BC 图像衍生的测量值,这些测量值与儿科和 AYA 淋巴瘤患者治疗相关晚期效应的风险相关。BC 测量值的基于图像的监测可能通过识别具有治疗相关晚期效应风险最高的患者,为儿科淋巴瘤患者的个性化医学提供更多机会。
• DL 指导的 CT 图像分析身体成分测量值与手动图像分析达到高度一致水平。• 在癌症治疗过程中,脂肪较多、肌肉较少的儿科患者发生严重不良事件的可能性高于其临床对照者。• 身体成分的深度学习可能通过为具有治疗相关晚期效应风险高的儿科、青少年和年轻成人提供实时监测,为常规 CT 成像增加价值。