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Evaluation of chemotherapy response in ovarian cancer treatment using quantitative CT image biomarkers: A preliminary study

机译:用定量CT图像生物标志物评价卵巢癌治疗中的化疗反应:初步研究

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The purpose of this study is to identify and apply quantitative image biomarkers for early prediction of the tumor response to the chemotherapy among the ovarian cancer patients participated in the clinical trials of testing new drugs. In the experiment, we retrospectively selected 30 cases from the patients who participated in Phase Ⅰ clinical trials of new drug or drug agents for ovarian cancer treatment. Each case is composed of two sets of CT images acquired pre- and post-treatment (4-6 weeks after starting treatment). A computer-aided detection (CAD) scheme was developed to extract and analyze the quantitative image features of the metastatic tumors previously tracked by the radiologists using the standard Response Evaluation Criteria in Solid Tumors (RECIST) guideline. The CAD scheme first segmented 3-D tumor volumes from the background using a hybrid tumor segmentation scheme. Then, for each segmented tumor, CAD computed three quantitative image features including the change of tumor volume, tumor CT number (density) and density variance. The feature changes were calculated between the matched tumors tracked on the CT images acquired pre- and post-treatments. Finally, CAD predicted patient's 6-month progression-free survival (PFS) using a decision-tree based classifier. The performance of the CAD scheme was compared with the RECIST category. The result shows that the CAD scheme achieved a prediction accuracy of 76.7% (23/30 cases) with a Kappa coefficient of 0.493, which is significantly higher than the performance of RECIST prediction with a prediction accuracy and Kappa coefficient of 60% (17/30) and 0.062, respectively. This study demonstrated the feasibility of analyzing quantitative image features to improve the early predicting accuracy of the tumor response to the new testing drugs or therapeutic methods for the ovarian cancer patients.
机译:本研究的目的是识别和应用定量图像生物标志物,用于早期预测卵巢癌患者中肿瘤反应的肿瘤反应,参与测试新药的临床试验。在实验中,我们回顾性地选择了30例患者参加Ⅰ期Ⅰ期临床试验的卵巢癌治疗。每种情况都由两组CT图像组成,获得和后治疗(开始治疗后4-6周)。开发了一种计算机辅助检测(CAD)方案以利用实体​​瘤中的标准响应评估标准(再次入侵)指南,提取和分析先前由放射科学医生跟踪的转移瘤的定量图像特征。 CAD方案首先使用杂交肿瘤分割方案从背景中分段3-D肿瘤体积。然后,对于每个分段的肿瘤,CAD计算了三种定量图像特征,包括肿瘤体积的变化,肿瘤CT数(密度)和密度方差。在CT图像上追踪的匹配肿瘤之间计算特征变化,获得预处理和后处理。最后,CAD使用基于决策树的分类器预测了患者的6个月无进展生存(PFS)。将CAD方案的性能与Recist类别进行比较。结果表明,CAD方案达到了76.7%(23/30例)的预测精度,Kappa系数为0.493,其显着高于再现预测精度和60%的κ系数的再现预测性能(17 / 30)分别为0.062。本研究证明了分析定量图像特征的可行性,以改善肿瘤反应的早期预测准确性对卵巢癌患者的新测试药物或治疗方法。

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