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A Supervised Learning Tool for Prostate Cancer Foci Detection and Aggressiveness Identification using Multiparametric magnetic resonance imaging/magnetic resonance spectroscopy imaging

机译:使用多参数磁共振成像/磁共振波谱成像技术进行前列腺癌病灶检测和攻击性识别的有监督学习工具

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摘要

Prostate cancer is the most frequently diagnosed cancer in men in the United States. The current main methods for diagnosing prostate cancer include prostate-specific antigen test and transrectal biopsy. Prostate-specific antigen screening has been criticized for overdiagnosis and unnecessary treatment, and transrectal biopsy is an invasive procedure with low sensitivity for diagnosis. We provided a quantitative tool using supervised learning with multiparametric imaging to be able to accurately detect cancer foci and its aggressiveness. A total of 223 specimens from patients who received magnetic resonance imaging (MRI) and magnetic resonance spectroscopy imaging prior to the surgery were studied. Multiparametric imaging included extracting T2-map, apparent diffusion coefficient (ADC) using diffusion-weighted MRI, Ktrans using dynamic contrast-enhanced MRI, and 3-dimensional-MR spectroscopy. A pathologist reviewed all 223 specimens and marked cancerous regions on each and graded them with Gleason scores, which served as the ground truth to validate our prediction model. In cancer aggressiveness prediction, the average area under the receiver operating characteristic curve (AUC) value was 0.73 with 95% confidence interval (0.72-0.74) and the average sensitivity and specificity were 0.72 (0.71-0.73) and 0.73 (0.71-0.75), respectively. For the cancer detection model, the average AUC value was 0.68 (0.66-0.70) and the average sensitivity and specificity were 0.73 (0.70-0.77) and 0.62 (0.60-0.68), respectively. Our method included capability to handle class imbalance using adaptive boosting with random undersampling. In addition, our method was noninvasive and allowed for nonsubjective disease characterization, which provided physician information to make personalized treatment decision.
机译:前列腺癌是美国男性中最常被诊断出的癌症。当前诊断前列腺癌的主要方法包括前列腺特异性抗原检测和经直肠活检。前列腺特异性抗原筛查因过度诊断和不必要的治疗而受到批评,经直肠穿刺活检是一种侵入性检查,对诊断的敏感性较低。我们提供了使用监督学习和多参数成像的定量工具,能够准确检测癌灶及其侵袭性。总共对来自患者的223个标本进行了手术前的磁共振成像(MRI)和磁共振波谱成像成像研究。多参数成像包括提取T2图,使用扩散加权MRI的表观扩散系数(ADC),使用动态对比度增强MRI的K trans 和3维MR光谱。病理学家检查了所有223个标本,并在每个标本上标出了癌变区域,并用格里森(Gleason)评分对其进行了分级,这是验证我们的预测模型的基础事实。在癌症侵袭性预测中,接受者工作特征曲线(AUC)值下的平均面积为0.73,置信区间为95%(0.72-0.74),平均敏感性和特异性为0.72(0.71-0.73)和0.73(0.71-0.75) , 分别。对于癌症检测模型,平均AUC值为0.68(0.66-0.70),平均敏感性和特异性分别为0.73(0.70-0.77)和0.62(0.60-0.68)。我们的方法包括使用带有随机欠采样的自适应增强来处理类不平衡的能力。此外,我们的方法是非侵入性的,可用于非主观疾病的特征描述,这为医师提供信息以做出个性化的治疗决策。

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