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[一种用于鉴别无可见脂肪的肾细胞癌与肾血管平滑肌脂肪瘤的判别模型:基于多分类器的层次融合框架]

[A discrimination model for differentiation of renal cell carcinoma from renal angiomyolipoma without visible fat: based on hierarchical fusion framework of multi-classifier].

作者信息

Mo T, Wu Y, Yang R, Zhen X

机构信息

Radiotherapy Center of Department of Radiology, Affiliated Dongguan Hospital of Southern Medical University, Dongguan 523059, China.

Department of Radiology, Guangzhou First People's Hospital, School of Medicine, South China University of Technology, Guangzhou 510180, China.

出版信息

Nan Fang Yi Ke Da Xue Xue Bao. 2022 Aug 20;42(8):1174-1181. doi: 10.12122/j.issn.1673-4254.2022.08.09.

Abstract

OBJECTIVE

To investigate the capabilities of classification models based on hierarchical fusion framework of multi-classifier using a random projection strategy for differentiation of renal cell carcinoma (RCC) from small renal angiomyolipoma (< 4 cm) without visible fat (AMLwvf).

METHODS

We retrospectively collected the clinical data from 163 patients with pathologically proven small renal mass, including 118 with RCC and 45 with AMLwvf.Target region of interest (ROI) delineation was performed on an unenhanced phase (UP) CT image slice displaying the largest lesion area.The radiomics features were used to establish a hierarchical fusion method.On the projection-based level, the homogeneous classifiers were fused, and the fusion results were further fused at the classifier-based level to construct a multi-classifier fusion system based on random projection for differentiation of AMLwvf and RCC.The discriminative capability of this model was quantitatively evaluated using 5-fold cross validation and 4 evaluation indexes[specificity, sensitivity, accuracy and area under ROC curve (AUC)].We quantitatively compared this multi-classifier fusion framework against different classification models using a single classifier and several multi-classifier ensemble models.

RESULTS

When the projection number was set at 10, the proposed hierarchical fusion differentiation framework achieved the best results on all the evaluation measurements.At the optimal projection number of 10, the specificity, sensitivity, average accuracy and AUC of the multi-classifier ensemble classification system for differentiation between AMLwvf and RCC were 0.853, 0.693, 0.809 and 0.870, respectively.

CONCLUSION

The proposed model constructed based on a multi-classifier fusion system using random projection shows better performance to differentiate RCC from AMLwvf than the AMLwvf and RCC discrimination models based on a single classification algorithm and the currently available benchmark ensemble methods.

摘要

目的

探讨基于多分类器分层融合框架并采用随机投影策略的分类模型区分肾细胞癌(RCC)与无可见脂肪的小肾血管平滑肌脂肪瘤(<4 cm,AMLwvf)的能力。

方法

我们回顾性收集了163例经病理证实的小肾肿块患者的临床资料,其中118例为RCC,45例为AMLwvf。在显示最大病变区域的平扫期(UP)CT图像切片上进行感兴趣目标区域(ROI)勾画。利用放射组学特征建立分层融合方法。在基于投影的层面上,融合同类分类器,然后在基于分类器的层面上进一步融合融合结果,构建基于随机投影的多分类器融合系统以区分AMLwvf和RCC。使用5折交叉验证和4个评估指标[特异性、敏感性、准确性和ROC曲线下面积(AUC)]对该模型的判别能力进行定量评估。我们使用单分类器和几种多分类器集成模型将这种多分类器融合框架与不同的分类模型进行定量比较。

结果

当投影数设置为10时,所提出的分层融合鉴别框架在所有评估指标上均取得了最佳结果。在最佳投影数10时,用于区分AMLwvf和RCC的多分类器集成分类系统的特异性、敏感性、平均准确性和AUC分别为0.853、0.693、0.809和0.870。

结论

基于随机投影的多分类器融合系统构建的所提出模型在区分RCC和AMLwvf方面比基于单一分类算法的AMLwvf和RCC鉴别模型以及当前可用的基准集成方法表现更好。

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