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基于扩散加权成像的影像组学特征评估乳腺癌受体状态和分子亚型。

Radiomic Signatures Derived from Diffusion-Weighted Imaging for the Assessment of Breast Cancer Receptor Status and Molecular Subtypes.

机构信息

Department of Radiology, Breast Imaging Service, Memorial Sloan Kettering Cancer Center, 300 E 66th St, 7th Floor, New York, NY, 10065, USA.

Department of Diagnostic and Interventional Radiology, University Hospital Frankfurt, Frankfurt, Germany.

出版信息

Mol Imaging Biol. 2020 Apr;22(2):453-461. doi: 10.1007/s11307-019-01383-w.

Abstract

PURPOSE

To compare annotation segmentation approaches and to assess the value of radiomics analysis applied to diffusion-weighted imaging (DWI) for evaluation of breast cancer receptor status and molecular subtyping.

PROCEDURES

In this IRB-approved HIPAA-compliant retrospective study, 91 patients with treatment-naïve breast malignancies proven by image-guided breast biopsy, (luminal A, n = 49; luminal B, n = 8; human epidermal growth factor receptor 2 [HER2]-enriched, n = 11; triple negative [TN], n = 23) underwent multiparametric magnetic resonance imaging (MRI) of the breast at 3 T with dynamic contrast-enhanced MRI, T2-weighted and DW imaging. Lesions were manually segmented on high b-value DW images and segmentation ROIS were propagated to apparent diffusion coefficient (ADC) maps. In addition in a subgroup (n = 79) where lesions were discernable on ADC maps alone, these were also directly segmented there. To derive radiomics signatures, the following features were extracted and analyzed: first-order histogram (HIS), co-occurrence matrix (COM), run-length matrix (RLM), absolute gradient, autoregressive model (ARM), discrete Haar wavelet transform (WAV), and lesion geometry. Fisher, probability of error and average correlation, and mutual information coefficients were used for feature selection. Linear discriminant analysis followed by k-nearest neighbor classification with leave-one-out cross-validation was applied for pairwise differentiation of receptor status and molecular subtyping. Histopathologic results were considered the gold standard.

RESULTS

For lesion that were segmented on DWI and segmentation ROIs were propagated to ADC maps the following classification accuracies > 90% were obtained: luminal B vs. HER2-enriched, 94.7 % (based on COM features); luminal B vs. others, 92.3 % (COM, HIS); and HER2-enriched vs. others, 90.1 % (RLM, COM). For lesions that were segmented directly on ADC maps, better results were achieved yielding the following classification accuracies: luminal B vs. HER2-enriched, 100 % (COM, WAV); luminal A vs. luminal B, 91.5 % (COM, WAV); and luminal B vs. others, 91.1 % (WAV, ARM, COM).

CONCLUSIONS

Radiomic signatures from DWI with ADC mapping allows evaluation of breast cancer receptor status and molecular subtyping with high diagnostic accuracy. Better classification accuracies were obtained when breast tumor segmentations could be performed on ADC maps.

摘要

目的

比较注释分割方法,并评估放射组学分析在扩散加权成像(DWI)用于评估乳腺癌受体状态和分子亚型中的应用价值。

程序

在这项经过机构审查委员会批准并符合 HIPAA 规定的回顾性研究中,91 名经图像引导下乳腺活检证实患有治疗初发乳腺恶性肿瘤的患者(腔 A 型,n=49;腔 B 型,n=8;人表皮生长因子受体 2 [HER2]富集型,n=11;三阴性 [TN]型,n=23)在 3T 进行了多参数磁共振成像(MRI)检查,包括动态对比增强 MRI、T2 加权和 DWI。在高 b 值 DWI 图像上手动对病变进行分割,并将分割的 ROI 传播到表观扩散系数(ADC)图上。在一个亚组(n=79)中,仅在 ADC 图上可分辨病变的情况下,也直接在那里对病变进行分割。为了提取放射组学特征,提取并分析了以下特征:一阶直方图(HIS)、共生矩阵(COM)、游程长度矩阵(RLM)、绝对梯度、自回归模型(ARM)、离散哈尔小波变换(WAV)和病变几何形状。Fisher、错误概率和平均相关性以及互信息系数用于特征选择。应用线性判别分析和 k-最近邻分类(采用留一法交叉验证),用于受体状态和分子亚型的两两差异分析。组织病理学结果被认为是金标准。

结果

对于在 DWI 上进行分割且将分割的 ROI 传播到 ADC 图上的病变,获得了以下大于 90%的分类准确率:腔 B 型与 HER2 富集型,94.7%(基于 COM 特征);腔 B 型与其他型,92.3%(COM、HIS);HER2 富集型与其他型,90.1%(RLM、COM)。对于直接在 ADC 图上进行分割的病变,获得了更好的结果,分类准确率如下:腔 B 型与 HER2 富集型,100%(COM、WAV);腔 A 型与腔 B 型,91.5%(COM、WAV);腔 B 型与其他型,91.1%(WAV、ARM、COM)。

结论

ADC 映射 DWI 的放射组学特征可用于评估乳腺癌受体状态和分子亚型,具有较高的诊断准确性。当可以在 ADC 图上对乳腺肿瘤进行分割时,可获得更好的分类准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47a4/7062654/c5b80745ff8f/11307_2019_1383_Fig1_HTML.jpg

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