前列腺癌CAD系统的数据集同质性评估

S. Rosati, V. Giannini, C. Castagneri, D. Regge, G. Balestra
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引用次数: 3

摘要

当前放射学领域的研究越来越关注于开发能够支持放射科医生检测可疑区域的计算机辅助检测(CAD)系统,以减少疏忽、错误和工作时间。前列腺癌(PCa)是美国男性最常见的癌症。多参数磁共振(mp-MR)成像最近成为前列腺癌诊断的有力工具。用于其自动处理和细化的CAD系统的发展正在增长,但它们可能受到前列腺癌的成像特征变化的影响,这取决于其侵袭性和位置。本研究的目的是表征来自mp-MR图像的大量数据的同质性,以评估对PCa检测的CAD系统性能的影响。首先,对60例前列腺切除术前行mp-MR检查的患者,从感兴趣的恶性和正常区域提取15个半定量和定量特征。然后,我们使用基于自组织地图(SOM)的聚类程序,从特征的角度对具有相似特征的患者进行分组。最后,我们评估了这种划分对恶性体素检测的影响,该分类器基于一组仅使用属于同一聚类的患者训练和测试的SOMs。我们将这些结果与所有患者使用独特分类器获得的结果进行比较。分析表明,对图像进行同质分组可以有效地提高最终的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dataset homogeneity assessment for a prostate cancer CAD system
Current research in radiology field is increasingly focusing on developing computer aided detection (CAD) systems able to support radiologists in the detection of suspicious regions, reducing oversight, errors and working time. Prostate cancer (PCa) is the most common cancer afflicting men in USA. Multiparametric Magnetic Resonance (mp-MR) imaging is recently emerging as a powerful tool for PCa diagnosis. The development of CAD systems for its automatic processing and elaboration is growing but they can be affected by the variation of the imaging characteristics of PCa depending on its aggressiveness and location. The aim of this study is to characterize the homogeneity of a large set of data derived from mp-MR images, in order to assess the effect on the performances of a CAD system for PCa detection. Firstly, 15 semiquantitative and quantitative features were extracted from malignant and normal region of interest in 60 patients, who underwent mp-MR exam before prostatectomy. Then, we used a clustering procedure based on a Self-Organizing Map (SOM) for grouping patients with similar characteristics from the features point of view. Finally, we evaluated the impact of this partition on the malignant voxel detection by means of a classifier based on a set of SOMs trained and tested using only those patient belonging to the same cluster. We compared these results with those obtained using a unique classifier for all patients. From our analysis it emerged that the image partition in homogeneous groups can effectively improve the final detection performances.
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