论文标题

按区域按区域相关的特征聚集有助于区分侵袭性与CT上的浅透明细胞肾细胞癌亚型

Correlated Feature Aggregation by Region Helps Distinguish Aggressive from Indolent Clear Cell Renal Cell Carcinoma Subtypes on CT

论文作者

Stacke, Karin, Bhattacharya, Indrani, Tse, Justin R., Brooks, James D., Sonn, Geoffrey A., Rusu, Mirabela

论文摘要

肾细胞癌(RCC)是一种随着临床行为而变化的常见癌症。懒惰的RCC通常是低度而没有坏死的低度,并且可以在没有治疗的情况下受到监测。激进的RCC通常是高级的,如果未及时检测和治疗,可能会导致转移和死亡。尽管大多数肾脏癌症都在CT扫描中检测到,但分级是基于侵入性活检或手术的组织学。确定对CT图像的侵略性在临床上很重要,因为它促进了风险分层和治疗计划。这项研究旨在使用机器学习方法来识别与病理学特征相关的放射学特征,以促进评估CT图像上的癌症侵略性而不是组织学。本文提出了一种新型的自动化方法,即按区域(Corrfabr)相关的特征聚集,用于通过利用放射学和相应的未对齐病理学图像之间的相关性来对透明细胞RCC进行分类。 Corrfabr由三个主要步骤组成:(1)特征聚集,其中从放射学和病理图像中提取区域级特征,(2)融合,放射学特征与病理学特征相关的放射学特征是在区域级别上学习的,并且(3)在使用CT单独使用CT的Indinolent Clear RCC区分攻击性的相关特征,该预测可用于区分攻击性的侵略性。因此,在训练过程中,Corrfabr从放射学和病理学图像中学习,但是在没有病理图像的情况下,Corrfabr将使用CORFABR将侵略性与顽固的透明细胞RCC区分开。 Corrfabr仅比放射学特征改善了分类性能,二进制分类F1得分从0.68(0.04)增加到0.73(0.03)。这证明了将病理疾病特征纳入CT图像上清晰细胞RCC侵袭性的分类的潜力。

Renal cell carcinoma (RCC) is a common cancer that varies in clinical behavior. Indolent RCC is often low-grade without necrosis and can be monitored without treatment. Aggressive RCC is often high-grade and can cause metastasis and death if not promptly detected and treated. While most kidney cancers are detected on CT scans, grading is based on histology from invasive biopsy or surgery. Determining aggressiveness on CT images is clinically important as it facilitates risk stratification and treatment planning. This study aims to use machine learning methods to identify radiology features that correlate with features on pathology to facilitate assessment of cancer aggressiveness on CT images instead of histology. This paper presents a novel automated method, Correlated Feature Aggregation By Region (CorrFABR), for classifying aggressiveness of clear cell RCC by leveraging correlations between radiology and corresponding unaligned pathology images. CorrFABR consists of three main steps: (1) Feature Aggregation where region-level features are extracted from radiology and pathology images, (2) Fusion where radiology features correlated with pathology features are learned on a region level, and (3) Prediction where the learned correlated features are used to distinguish aggressive from indolent clear cell RCC using CT alone as input. Thus, during training, CorrFABR learns from both radiology and pathology images, but during inference, CorrFABR will distinguish aggressive from indolent clear cell RCC using CT alone, in the absence of pathology images. CorrFABR improved classification performance over radiology features alone, with an increase in binary classification F1-score from 0.68 (0.04) to 0.73 (0.03). This demonstrates the potential of incorporating pathology disease characteristics for improved classification of aggressiveness of clear cell RCC on CT images.

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