身体成分分析技术及其在肿瘤学中的应用:综述。

Anil Kumar Maurya, L. Aggarwal, Sunil Choudhary
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引用次数: 0

摘要

肿瘤学界对了解如何利用身体成分测量来改善癌症治疗和对每年约 2000 万确诊癌症患者的生存护理越来越感兴趣。最近的观察性研究表明,肌肉和脂肪组织分布是导致术后并发症等临床结果和总生存率降低的风险因素。人们逐渐认识到,身体质量指数(BMI)既不足以识别因肌肉健康状况不佳或脂肪过多而导致不良健康后果的患者,也不能准确地对脂肪分布进行分类。腹部 CT 是一种最常用的成像检查,可用于多种临床适应症,但只能用于诊断直接问题。此外,每次 CT 检查都包含非常可靠的身体成分数据,而这些数据在常规临床实践中一般都不会被使用。该领域迫切希望找出能改变身体成分的治疗干预措施,降低这类人群不良临床结果的发生率。通过使用人工智能算法,使所有这些相关的生物统计测量完全自动化,从而提供快速、客观的评估,现在大规模的人群筛查已经变得可行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Body Composition Analysis Techniques and Its Application in Oncology: A Review.
The oncology community has shown growing interest to understand how body composition measures can be utilized to improve cancer treatment and survivorship care for about 20 million individuals diagnosed with cancer annually. Recent observational studies demonstrate that muscle and adipose tissue distribution are risk factors for clinical outcomes such as postoperative complications, and worse overall survival. There is an emergent recognition that body mass index (BMI) is neither adequate to identify patients with adverse health outcomes due to poor muscle health or excess adiposity, nor does BMI accurately classify the distribution of adiposity. Abdominal CT is a most frequently imaging examination for a wide variety of clinical indications, but it is only used to diagnose the immediate problem. Additionally, each CT examination contains very robust data on body composition which generally goes unused in routine clinical practice. The field is eager to identify therapeutic interventions that modify body composition and reduce the incidence of poor clinical outcomes in this population. Large scale population based screening is feasible now by making all of these relevant biometric measures fully automated through the use of artificial intelligence algorithms, which provide rapid and objective assessment.
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