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Automated multiparametric localization of prostate cancer based on B-mode, shear-wave elastography, and contrast-enhanced ultrasound radiomics

机译:基于B模式,剪切波弹性造影和对比度增强的超声波辐射基于前列腺癌的自动化多态鉴定

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Objectives The aim of this study was to assess the potential of machine learning based on B-mode, shear-wave elastography (SWE), and dynamic contrast-enhanced ultrasound (DCE-US) radiomics for the localization of prostate cancer (PCa) lesions using transrectal ultrasound. Methods This study was approved by the institutional review board and comprised 50 men with biopsy-confirmed PCa that were referred for radical prostatectomy. Prior to surgery, patients received transrectal ultrasound (TRUS), SWE, and DCE-US for three imaging planes. The images were automatically segmented and registered. First, model-based features related to contrast perfusion and dispersion were extracted from the DCE-US videos. Subsequently, radiomics were retrieved from all modalities. Machine learning was applied through a random forest classification algorithm, using the co-registered histopathology from the radical prostatectomy specimens as a reference to draw benign and malignant regions of interest. To avoid overfitting, the performance of the multiparametric classifier was assessed through leave-one-patient-out cross-validation. Results The multiparametric classifier reached a region-wise area under the receiver operating characteristics curve (ROC-AUC) of 0.75 and 0.90 for PCa and Gleason > 3 + 4 significant PCa, respectively, thereby outperforming the best-performing single parameter (i.e., contrast velocity) yielding ROC-AUCs of 0.69 and 0.76, respectively. Machine learning revealed that combinations between perfusion-, dispersion-, and elasticity-related features were favored. Conclusions In this paper, technical feasibility of multiparametric machine learning to improve upon single US modalities for the localization of PCa has been demonstrated. Extended datasets for training and testing may establish the clinical value of automatic multiparametric US classification in the early diagnosis of PCa.
机译:目的本研究的目的是评估基于B模式,剪切波弹性摄影(SWE)和动态对比增强超声(DCE-US)射域的机器学习的潜力,用于定位前列腺癌(PCA)病变使用经拓超声波。方法本研究经机构审查委员会批准,并包含50名男性,其活检证实的PCA被用于自由基前列腺切除术。在手术前,患者接受了三个成像平面的经癌超声(TRUS),SWE和DCE-US。图像自动分段并注册。首先,从DCE-US视频中提取与对比灌注和分散相关的基于模型的特征。随后,从所有方式检索射线瘤。通过随机森林分类算法应用机器学习,使用来自自由基前列腺切除术标本的共同注册的组织病理学作为参考吸引良性和恶性地区的感兴趣。为避免过度装饰,通过休假 - 一患者交叉验证来评估多射金分类器的性能。结果Multiparametric分类器分别在接收器操作特性曲线(Roc-AUC)下达到0.75和0.90的地区,分别用于PCA和Gleason> 3 + 4个显着的PCA,从而优于最佳性能的单个参数(即,对比度速度分别产生0.69和0.76的Roc-AUC。机器学习揭示了灌注,分散和弹性相关特征之间的组合。结论在本文中,已经证明了在PCA定位的单一美国方式上改进的多次机器学习的技术可行性。培训和测试的扩展数据集可以在PCA的早期诊断中建立自动多射床分类的临床价值。

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