Narrative review of radiomics for classifying pulmonary nodules and potential impact on lung cancer screening

Matthew J. Stephens
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Abstract

: Lung cancer screening has proven to be a useful tool for identifying early stage lung cancers, however, the overall accuracy can sometimes lead to false positive and negatives that have potential adverse effects on patient outcomes. Advancement in computational methods have allowed for quantification of pulmonary nodule imaging features, referred to as radiomics, which have the potential to increase lung cancer screening accuracy and improve patient management. The initial part of this review covers common radiomic features and the challenges in deriving them. The second part of this review systematically evaluates literature relating to radiomics and lung cancer finding articles in areas that might have the potential to change management in lung cancer screening. Pertinent literature included initial nodule classification as benign or malignant, classifying subsolid nodules as invasive or noninvasive, and prediction of tumor recurrence after surgical resection. The reviewed articles evaluating use of radiomics are mostly limited due to small sample sizes and lack of a validation cohort. These studies show potential for radiomic features to improve pulmonary nodule classification and change the way patients are managed, however, comparison between studies is limited due to variabilities in the way these features are derived. To make these features useful will require further research and standardization of the workflows that derive these features.
放射组学在肺结节分类及肺癌筛查中的潜在影响综述
肺癌筛查已被证明是识别早期肺癌的有用工具,然而,总体准确性有时会导致假阳性和阴性,这对患者的预后有潜在的不利影响。计算方法的进步使得肺结节成像特征的量化成为可能,被称为放射组学,这有可能提高肺癌筛查的准确性和改善患者管理。本综述的第一部分涵盖了常见的放射学特征和推导它们的挑战。本综述的第二部分系统地评估了与放射组学和肺癌发现相关的文献,这些文献可能有可能改变肺癌筛查的管理。相关文献包括结节的良性或恶性的初始分类,实下结节的侵袭性和非侵袭性分类,以及手术切除后肿瘤复发的预测。由于样本量小和缺乏验证队列,所回顾的评价放射组学使用的文章大多受到限制。这些研究显示放射学特征在改善肺结节分类和改变患者治疗方式方面的潜力,然而,由于这些特征的推导方式存在差异,研究之间的比较受到限制。要使这些特性有用,需要进一步研究和标准化派生这些特性的工作流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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