Khalvati Farzad, Wong Alexander, Haider Masoom A
Department of Medical Imaging, University of Toronto, Toronto, ON, Canada.
Physical Sciences, Sunnybrook Research Institute, Toronto, ON, Canada.
BMC Med Imaging. 2015 Aug 5;15:27. doi: 10.1186/s12880-015-0069-9.
Prostate cancer is the most common form of cancer and the second leading cause of cancer death in North America. Auto-detection of prostate cancer can play a major role in early detection of prostate cancer, which has a significant impact on patient survival rates. While multi-parametric magnetic resonance imaging (MP-MRI) has shown promise in diagnosis of prostate cancer, the existing auto-detection algorithms do not take advantage of abundance of data available in MP-MRI to improve detection accuracy. The goal of this research was to design a radiomics-based auto-detection method for prostate cancer via utilizing MP-MRI data.
In this work, we present new MP-MRI texture feature models for radiomics-driven detection of prostate cancer. In addition to commonly used non-invasive imaging sequences in conventional MP-MRI, namely T2-weighted MRI (T2w) and diffusion-weighted imaging (DWI), our proposed MP-MRI texture feature models incorporate computed high-b DWI (CHB-DWI) and a new diffusion imaging modality called correlated diffusion imaging (CDI). Moreover, the proposed texture feature models incorporate features from individual b-value images. A comprehensive set of texture features was calculated for both the conventional MP-MRI and new MP-MRI texture feature models. We performed feature selection analysis for each individual modality and then combined best features from each modality to construct the optimized texture feature models.
The performance of the proposed MP-MRI texture feature models was evaluated via leave-one-patient-out cross-validation using a support vector machine (SVM) classifier trained on 40,975 cancerous and healthy tissue samples obtained from real clinical MP-MRI datasets. The proposed MP-MRI texture feature models outperformed the conventional model (i.e., T2w+DWI) with regard to cancer detection accuracy.
Comprehensive texture feature models were developed for improved radiomics-driven detection of prostate cancer using MP-MRI. Using a comprehensive set of texture features and a feature selection method, optimal texture feature models were constructed that improved the prostate cancer auto-detection significantly compared to conventional MP-MRI texture feature models.
前列腺癌是北美最常见的癌症形式,也是癌症死亡的第二大主要原因。前列腺癌的自动检测在早期检测中可发挥重要作用,这对患者生存率有重大影响。虽然多参数磁共振成像(MP-MRI)在前列腺癌诊断中显示出前景,但现有的自动检测算法未利用MP-MRI中可用的大量数据来提高检测准确性。本研究的目标是通过利用MP-MRI数据设计一种基于放射组学的前列腺癌自动检测方法。
在这项工作中,我们提出了用于放射组学驱动的前列腺癌检测的新MP-MRI纹理特征模型。除了传统MP-MRI中常用的非侵入性成像序列,即T2加权磁共振成像(T2w)和扩散加权成像(DWI)外,我们提出的MP-MRI纹理特征模型还纳入了计算高b值扩散加权成像(CHB-DWI)和一种名为相关扩散成像(CDI)的新扩散成像模式。此外,所提出的纹理特征模型纳入了来自各个b值图像的特征。为传统MP-MRI和新的MP-MRI纹理特征模型计算了一组全面的纹理特征。我们对每个单独的模式进行了特征选择分析,然后组合每个模式的最佳特征以构建优化的纹理特征模型。
使用在从真实临床MP-MRI数据集中获得的40975个癌组织和健康组织样本上训练的支持向量机(SVM)分类器,通过留一患者交叉验证评估了所提出的MP-MRI纹理特征模型的性能。在所提出的MP-MRI纹理特征模型在癌症检测准确性方面优于传统模型(即T2w + DWI)。
开发了综合纹理特征模型,以改进使用MP-MRI进行的放射组学驱动的前列腺癌检测。使用一组全面的纹理特征和特征选择方法,构建了最佳纹理特征模型,与传统MP-MRI纹理特征模型相比,显著提高了前列腺癌自动检测能力。