Mark Jesus M. Magbanua, Wen Li, Laura J. van ’t Veer
{"title":"Integrating Imaging and Circulating Tumor DNA Features for Predicting Patient Outcomes","authors":"Mark Jesus M. Magbanua, Wen Li, Laura J. van ’t Veer","doi":"10.3390/cancers16101879","DOIUrl":null,"url":null,"abstract":"Biomarkers for evaluating tumor response to therapy and estimating the risk of disease relapse represent tremendous areas of clinical need. To evaluate treatment efficacy, tumor response is routinely assessed using different imaging modalities like positron emission tomography/computed tomography or magnetic resonance imaging. More recently, the development of circulating tumor DNA detection assays has provided a minimally invasive approach to evaluate tumor response and prognosis through a blood test (liquid biopsy). Integrating imaging- and circulating tumor DNA-based biomarkers may lead to improvements in the prediction of patient outcomes. For this mini-review, we searched the scientific literature to find original articles that combined quantitative imaging and circulating tumor DNA biomarkers to build prediction models. Seven studies reported building prognostic models to predict distant recurrence-free, progression-free, or overall survival. Three discussed building models to predict treatment response using tumor volume, pathologic complete response, or objective response as endpoints. The limited number of articles and the modest cohort sizes reported in these studies attest to the infancy of this field of study. Nonetheless, these studies demonstrate the feasibility of developing multivariable response-predictive and prognostic models using regression and machine learning approaches. Larger studies are warranted to facilitate the building of highly accurate response-predictive and prognostic models that are generalizable to other datasets and clinical settings.","PeriodicalId":504676,"journal":{"name":"Cancers","volume":"124 14","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-05-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Cancers","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3390/cancers16101879","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Biomarkers for evaluating tumor response to therapy and estimating the risk of disease relapse represent tremendous areas of clinical need. To evaluate treatment efficacy, tumor response is routinely assessed using different imaging modalities like positron emission tomography/computed tomography or magnetic resonance imaging. More recently, the development of circulating tumor DNA detection assays has provided a minimally invasive approach to evaluate tumor response and prognosis through a blood test (liquid biopsy). Integrating imaging- and circulating tumor DNA-based biomarkers may lead to improvements in the prediction of patient outcomes. For this mini-review, we searched the scientific literature to find original articles that combined quantitative imaging and circulating tumor DNA biomarkers to build prediction models. Seven studies reported building prognostic models to predict distant recurrence-free, progression-free, or overall survival. Three discussed building models to predict treatment response using tumor volume, pathologic complete response, or objective response as endpoints. The limited number of articles and the modest cohort sizes reported in these studies attest to the infancy of this field of study. Nonetheless, these studies demonstrate the feasibility of developing multivariable response-predictive and prognostic models using regression and machine learning approaches. Larger studies are warranted to facilitate the building of highly accurate response-predictive and prognostic models that are generalizable to other datasets and clinical settings.
评估肿瘤对治疗的反应和估计疾病复发风险的生物标志物是临床需求量巨大的领域。为评估治疗效果,通常使用正电子发射断层扫描/计算机断层扫描或磁共振成像等不同的成像模式来评估肿瘤反应。最近,循环肿瘤 DNA 检测试剂的开发为通过血液检测(液体活检)评估肿瘤反应和预后提供了一种微创方法。将基于成像和循环肿瘤 DNA 的生物标记物结合起来,可能会改善对患者预后的预测。在这篇微型综述中,我们检索了科学文献,寻找结合定量成像和循环肿瘤 DNA 生物标记物来建立预测模型的原创文章。七项研究报告了建立预后模型来预测无远处复发、无进展或总生存期的情况。三项研究讨论了使用肿瘤体积、病理完全反应或客观反应作为终点建立预测治疗反应的模型。这些研究中报告的文章数量有限,队列规模也不大,这证明了这一研究领域尚处于起步阶段。不过,这些研究证明了使用回归和机器学习方法开发多变量反应预测和预后模型的可行性。有必要进行更大规模的研究,以促进建立可推广到其他数据集和临床环境的高精度反应预测和预后模型。