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融合多期增强 CT 和临床特征的多模态模型预测胰腺癌淋巴结转移。

A multimodal model fusing multiphase contrast-enhanced CT and clinical characteristics for predicting lymph node metastases of pancreatic cancer.

机构信息

General Surgery Center, Department of Hepatobiliary Surgery II, Guangdong Provincial Research Center for Artificial Organ and Tissue Engineering, Guangzhou Clinical Research and Transformation Center for Artificial Liver, Institute of Regenerative Medicine, Zhujiang Hospital, Southern Medical University, Guangzhou, People's Republic of China.

School of Biomedical Engineering, Guangdong Provincial Key Laboratory of Medical Image Processing, Guangdong Province Engineering Laboratory for Medical Imaging and Diagnostic Technology, Southern Medical University, Guangzhou, People's Republic of China.

出版信息

Phys Med Biol. 2022 Aug 18;67(17). doi: 10.1088/1361-6560/ac858e.

Abstract

To develop a multimodal model that combines multiphase contrast-enhanced computed tomography (CECT) imaging and clinical characteristics, including experts' experience, to preoperatively predict lymph node metastasis (LNM) in pancreatic cancer patients.We proposed a new classifier fusion strategy (CFS) based on a new evidential reasoning (ER) rule (CFS-nER) by combining nomogram weights into a previous ER rule-based CFS. Three kernelled support tensor machine-based classifiers with plain, arterial, and venous phases of CECT as the inputs, respectively, were constructed. They were then fused based on the CFS-nER to construct a fusion model of multiphase CECT. The clinical characteristics were analyzed by univariate and multivariable logistic regression to screen risk factors, which were used to construct correspondent risk factor-based classifiers. Finally, the fusion model of the three phases of CECT and each risk factor-based classifier were fused further to construct the multimodal model based on our CFS-nER, named MMM-nER. This study consisted of 186 patients diagnosed with pancreatic cancer from four clinical centers in China, 88 (47.31%) of whom had LNM.The fusion model of the three phases of CECT performed better overall than single and two-phase fusion models; this implies that the three considered phases of CECT were supplementary and complemented one another. The MMM-nER further improved the predictive performance, which implies that our MMM-nER can complement the supplementary information between CECT and clinical characteristics. The MMM-nER had better predictive performance than based on previous classifier fusion strategies, which presents the advantage of our CFS-nER.We proposed a new CFS-nER, based on which the fusion model of the three phases of CECT and MMM-nER were constructed and performed better than all compared methods. MMM-nER achieved an encouraging performance, implying that it can assist clinicians in noninvasively and preoperatively evaluating the lymph node status of pancreatic cancer.

摘要

为了开发一种将多相对比增强 CT(CECT)成像与临床特征(包括专家经验)相结合的多模态模型,以术前预测胰腺癌患者的淋巴结转移(LNM)。我们提出了一种新的分类器融合策略(CFS),该策略基于新的证据推理(ER)规则(CFS-nER),将列线图权重纳入到之前基于 ER 规则的 CFS 中。分别构建了三个基于核支持张量机的分类器,它们的输入分别为 CECT 的平扫期、动脉期和静脉期。然后,根据 CFS-nER 对它们进行融合,构建一个多相 CECT 的融合模型。通过单变量和多变量逻辑回归分析临床特征,筛选风险因素,构建相应的风险因素分类器。最后,进一步融合多相 CECT 的融合模型和每个风险因素分类器,构建基于我们的 CFS-nER 的多模态模型,命名为 MMM-nER。本研究纳入了来自中国四个临床中心的 186 名诊断为胰腺癌的患者,其中 88 名(47.31%)有 LNM。CECT 三期融合模型整体表现优于单期和两期融合模型,说明所考虑的三期 CECT 具有互补性。MMM-nER 进一步提高了预测性能,说明我们的 MMM-nER 可以补充 CECT 与临床特征之间的互补信息。MMM-nER 具有比基于以往分类器融合策略更好的预测性能,这表明我们的 CFS-nER 具有优势。我们提出了一种新的 CFS-nER,在此基础上构建了 CECT 三期融合模型和 MMM-nER,表现优于所有比较方法。MMM-nER 表现出令人鼓舞的性能,这表明它可以帮助临床医生非侵入性地和术前评估胰腺癌的淋巴结状态。

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