论文标题

使用基于区域的分类器的前列腺病变检测和显着特征评估

Prostate Lesion Detection and Salient Feature Assessment Using Zone-Based Classifiers

论文作者

Yin, Haoli, Buduma, Nithin

论文摘要

多参数磁共振成像(MPMRI)在检测前列腺癌病变中起着越来越多的作用。因此,解释这些扫描的医学专业人员必须通过使用计算机辅助检测系统来减少人为错误的风险。但是,在系统实施中使用的算法种类繁多,产生了不同的结果。在这里,我们研究了每个前列腺区域的最佳机器学习分类器。我们还发现了明显的功能,以阐明模型的分类基本原理。在提供的数据中,我们收集并增强了T2加权图像和明显的扩散系数MAP图像,以首先通过三阶统计特征提取作为机器学习分类器的输入。对于我们的深度学习分类器,我们使用卷积神经网(CNN)体系结构进行自动提取和分类。 CNN结果的可解释性通过显着映射来改善,以了解内部的分类机制。最终,我们得出的结论是,有效检测周围和前纤维肌间基质(AS)病变更多地取决于统计分布特征,而过渡区(TZ)的病变更多地取决于纹理特征。合奏算法最适合PZ和TZ区域,而CNN在AS区域中最好。这些分类器可用于验证放射科医生的预测并减少怀疑患有前列腺癌的患者的阅读差异。还可以进一步研究本研究中报告的显着特征,以更好地了解使用mpMRI的前列腺病变的隐藏特征和生物标志物。

Multi-parametric magnetic resonance imaging (mpMRI) has a growing role in detecting prostate cancer lesions. Thus, it is pertinent that medical professionals who interpret these scans reduce the risk of human error by using computer-aided detection systems. The variety of algorithms used in system implementation, however, has yielded mixed results. Here we investigate the best machine learning classifier for each prostate zone. We also discover salient features to clarify the models' classification rationale. Of the data provided, we gathered and augmented T2 weighted images and apparent diffusion coefficient map images to extract first through third order statistical features as input to machine learning classifiers. For our deep learning classifier, we used a convolutional neural net (CNN) architecture for automatic feature extraction and classification. The interpretability of the CNN results was improved by saliency mapping to understand the classification mechanisms within. Ultimately, we concluded that effective detection of peripheral and anterior fibromuscular stroma (AS) lesions depended more on statistical distribution features, whereas those in the transition zone (TZ) depended more on textural features. Ensemble algorithms worked best for PZ and TZ zones, while CNNs were best in the AS zone. These classifiers can be used to validate a radiologist's predictions and reduce inter-reader variability in patients suspected to have prostate cancer. The salient features reported in this study can also be investigated further to better understand hidden features and biomarkers of prostate lesions with mpMRIs.

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