Wu Peng, Wu Kai, Li Zhe, Liu Hanlin, Yang Kai, Zhou Rong, Zhou Ziyu, Xing Nianzeng, Wu Song
Department of Urology, The Third Affiliated Hospital of Shenzhen University (Luohu Hospital Group), Shenzhen, China.
Shenzhen Following Precision Medical Research Institute, Luohu Hospital Group, Shenzhen, China.
Quant Imaging Med Surg. 2023 Feb 1;13(2):1023-1035. doi: 10.21037/qims-22-679. Epub 2023 Jan 9.
Multimodal analysis has shown great potential in the diagnosis and management of cancer. This study aimed to determine the multimodal data associations between radiological, pathologic, and molecular characteristics in bladder cancer.
A retrospective study of computed tomography (CT), pathologic slice, and RNA sequencing data from 127 consecutive adult patients in China who underwent bladder surgery and were pathologically diagnosed with bladder cancer was conducted. A total of 200 radiological and 1,029 pathologic features were extracted by radiomics and pathomics. Multimodal associations analysis and structural equation modeling were used to measure the cross-modal associations and structural relationships between CT and pathologic slice. A convolutional neural network was constructed for molecular subtyping based on multimodal imaging features. Class activation maps were used to examine the feature contribution in model decision-making. Cox regression and Kaplan-Meier survival analysis were used to explore the relevance of multimodal features to the prognosis of patients with bladder cancer.
A total of 77 densely associated blocks of feature pairs were identified between CT and whole slide images. The largest cross-modal associated block reflected the tumor-grade properties. A significant relation was found between pathological features and molecular subtypes (β=0.396; P<0.001). High-grade bladder cancer showed heterogeneity of significance across different scales and higher disorders at the microscopic level. The fused radiological and pathologic features achieved higher accuracy (area under the curve: 0.89; 95% CI: 0.75-1.0) than the unimodal method. Thirteen prognosis-related features from CT and whole slide images were identified.
Our work demonstrated the associations between CT, pathologic slices, and molecular signatures, and the potential to use multimodal data analysis in related clinical applications. Multimodal data analysis showed the potential of cross-inference of modal data and had higher diagnostic accuracy than the unimodal method.
多模态分析在癌症的诊断和管理中显示出巨大潜力。本研究旨在确定膀胱癌的放射学、病理学和分子特征之间的多模态数据关联。
对中国127例连续接受膀胱手术且经病理诊断为膀胱癌的成年患者的计算机断层扫描(CT)、病理切片和RNA测序数据进行回顾性研究。通过放射组学和病理组学提取了总共200个放射学特征和1029个病理学特征。采用多模态关联分析和结构方程模型来测量CT与病理切片之间的跨模态关联和结构关系。基于多模态成像特征构建卷积神经网络进行分子亚型分类。使用类激活图来检查模型决策中的特征贡献。采用Cox回归和Kaplan-Meier生存分析来探讨多模态特征与膀胱癌患者预后的相关性。
在CT与全切片图像之间共识别出77个特征对的紧密关联块。最大的跨模态关联块反映了肿瘤分级特性。发现病理特征与分子亚型之间存在显著关系(β = 0.396;P < 0.001)。高级别膀胱癌在不同尺度上显示出显著的异质性,在微观水平上具有更高的紊乱性。融合的放射学和病理学特征比单模态方法具有更高的准确性(曲线下面积:0.89;95%可信区间:0.75 - 1.0)。从CT和全切片图像中识别出13个与预后相关的特征。
我们的工作证明了CT、病理切片和分子特征之间的关联,以及在相关临床应用中使用多模态数据分析的潜力。多模态数据分析显示了模态数据交叉推断的潜力,并且比单模态方法具有更高的诊断准确性。