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Machine Learning for the Prediction of Prostate Cancer Biopsy Based on 3D Dynamic Contrast-Enhanced Ultrasound Quantification

机译:基于3D动态对比增强的超声定量的机器学习对前列腺癌活检的预测

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Non-targeted transrectal-ultrasound-guided 12-core systematic biopsy (SBx) is the current guideline-recommended clinical pathway for prostate cancer (PCa) diagnosis, despite being associated with a risk of complications as well as un-derdiagnosis or overtreatment. Quantification algorithms for dynamic contrast-enhanced ultrasound (DCE-US) have shown good potential for PCa localisation in two dimensions (2D), and a few have recently been expanded to 3D. In this work, we present a 3D implementation of all estimators in the contrast ultrasound dispersion imaging (CUDI) family and exploit combinations of the extracted parameters to predict individual SBx-core outcomes. We show that machine-learning approaches can improve the classification performance compared to individual CUDI parameters and foresee potential for further development in image-based PCa localisation.
机译:非靶向经直肠超声引导的12核系统活检(SBx)是当前指南推荐的前列腺癌(PCa)诊断临床途径,尽管存在并发症风险,诊断不足或治疗过度。动态对比增强超声(DCE-US)的量化算法在二维(2D)方面显示了PCa定位的良好潜力,并且最近有一些扩展到了3D。在这项工作中,我们介绍了对比超声弥散成像(CUDI)系列中所有估算器的3D实现,并利用提取参数的组合来预测单个SBx核心结果。我们表明,与单个CUDI参数相比,机器学习方法可以提高分类性能,并预见在基于图像的PCa本地化中进一步发展的潜力。

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