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Bladder Cancer Staging in CT Urography: Effect of Stage Labels on Statistical Modeling of a Decision Support System

机译:CT术语中膀胱癌分期:舞台标签对决策支持系统统计建模的影响

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In bladder cancer, stage T2 is an important threshold in the decision of administering neoadjuvant chemotherapy. Our long-term goal is to develop a quantitative computerized decision support system (CDSS-S) to aid clinicians in accurate staging. In this study, we examined the effect of stage labels of the training samples on modeling such a system. We used a data set of 84 bladder cancers imaged with CT Urography (CTU). At clinical staging prior to treatment, 43 lesions were staged as below stage T2 and 41 were stage T2 or above. After cystectomy and pathological staging that is considered the gold standard, 10 of the lesions were upstaged to stage T2 or above. After correcting the stage labels, 33 lesions were below stage T2, and 51 were stage T2 or above. For the CDSS-S, the lesions were segmented using our AI-CALS method and radiomic features were extracted. We trained a linear discriminant analysis (LDA) classifier with leave-one-case-out cross validation to distinguish between bladder lesions of stage T2 or above and those below stage T2. The CDSS-S was trained and tested with the corrected post-cystectomy labels, and as a comparison, CDSS-S was also trained with understaged pre-treatment labels and tested on lesions with corrected labels. The test AUC for the CDSS-S trained with corrected labels was 0.89 ± 0.04. For the CDSS-S trained with understaged pre-treatment labels and tested on the lesions with corrected labels, the test AUC was 0.86 ± 0.04. The likelihood of stage T2 or above for 9 out of the 10 understaged lesions was correctly increased for the CDSS-S trained with corrected labels. The CDSS-S is sensitive to the accuracy of stage labeling. The CDSS-S trained with correct labels shows promise in prediction of the bladder cancer stage.
机译:在膀胱癌中,阶段T2是施用Neoadjuvant化疗决定的重要阈值。我们的长期目标是制定定量的计算机化决策支持系统(CDSS-S),以帮助临床医生准确分期。在这项研究中,我们检查了训练样本阶段标签对这种系统建模的影响。我们使用了与CT脉冲(CTU)成像的84个膀胱癌的数据集。在治疗前临床分期,将43个病变分期,如下T2,41是阶段T2或以上。将被认为是金标准的膀胱切除术和病理分期后,将10个病变置于阶段T2或以上。在校正阶段标签后,33个病变低于T2,51阶段T2或以上。对于CDSS-S,使用我们的AI-CARS方法分段,提取抗裂解物,并提取射出物特征。我们培训了线性判别分析(LDA)分类器,具有休假 - 一例逐次交叉验证,以区分阶段T2或上方的膀胱病变以及低于T2之下的膀胱病变。 CDSS-S培训并用校正的后膀胱切除术标记进行培训,并且作为比较,CDSS-S也用LOOLCARCACE治疗标签培训并在具有矫正标签的病变上进行测试。具有校正标签培训的CDSS-S的测试AUC为0.89±0.04。对于使用LOOLCARCACE的预处理标签培训并在具有校正标签的病变上测试的CDSS-S培训,测试AUC为0.86±0.04。对于用校正标签训练的CDS-S培训,可以正确增加第T 2或以上9种以上的阶段T2或以上的可能性。 CDSS-S对阶段标签的准确性敏感。用正确标签训练的CDSS-S显示了预测膀胱癌阶段的承诺。

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