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Computer extracted texture features on T2w MRI to predict biochemical recurrence following radiation therapy for prostate cancer

机译:T2w MRI上计算机提取的纹理特征可预测前列腺癌放射治疗后的生化复发

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In this study we explore the ability of a novel machine learning approach, in conjunction with computer-extracted features describing prostate cancer morphology on pre-treatment MRI, to predict whether a patient will develop biochemical recurrence within ten years of radiation therapy. Biochemical recurrence, which is characterized by a rise in serum prostate-specific antigen (PSA) of at least 2 ng/mL above the nadir PSA, is associated with increased risk of metastasis and prostate cancer-related mortality. Currently, risk of biochemical recurrence is predicted by the Kattan nomogram, which incorporates several clinical factors to predict the probability of recurrence-free survival following radiation therapy (but has limited prediction accuracy). Semantic attributes on T2w MRI, such as the presence of extracapsular extension and seminal vesicle invasion and surrogate measurements of tumor size, have also been shown to be predictive of biochemical recurrence risk. While the correlation between biochemical recurrence and factors like tumor stage, Gleason grade, and extracapsular spread are well-documented, it is less clear how to predict biochemical recurrence in the absence of extracapsular spread and for small tumors fully contained in the capsule. Computer-extracted texture features, which quantitatively describe tumor micro-architecture and morphology on MRI, have been shown to provide clues about a tumor's aggressiveness. However, while computer-extracted features have been employed for predicting cancer presence and grade, they have not been evaluated in the context of predicting risk of biochemical recurrence. This work seeks to evaluate the role of computer-extracted texture features in predicting risk of biochemical recurrence on a cohort of sixteen patients who underwent pre-treatment 1.5 Tesla (T) T2w MRI. We extract a combination of first-order statistical, gradient, co-occurrence, and Gabor wavelet features from T2w MRI. To identify which of these T2w MRI texture features are potential independent prognostic markers of PSA failure, we implement a partial least squares (PLS) method to embed the data in a low-dimensional space and then use the variable importance in projections (VIP) method to quantify the contributions of individual features to classification on the PLS embedding. In spite of the poor resolution of the 1.5 T MRI data, we are able to identify three Gabor wavelet features that, in conjunction with a logistic regression classifier, yield an area under the receiver operating characteristic curve of 0.83 for predicting the probability of biochemical recurrence following radiation therapy. In comparison to both the Kattan nomogram and semantic MRI attributes, the ability of these three computer-extracted features to predict biochemical recurrence risk is demonstrated.
机译:在这项研究中,我们探索了一种新颖的机器学习方法,并结合了计算机提取的功能,可在治疗前MRI上描述前列腺癌的形态,以预测患者在放射治疗后的十年内是否会发生生化复发。生化复发的特征是血清前列腺特异性抗原(PSA)比最低PSA升高至少2 ng / mL,与转移风险和与前列腺癌相关的死亡率增加有关。当前,生化复发的风险由Kattan诺模图预测,该图结合了几种临床因素来预测放疗后无复发生存的可能性(但预测准确性有限)。 T2w MRI的语义属性,如存在囊外延伸和精囊侵犯以及肿瘤大小的替代测量,也已预示着生化复发的风险。虽然生化复发与肿瘤分期,格里森分级和包膜外扩散等因素之间的相关性已有充分文献记载,但尚不清楚如何在不存在包膜外扩散的情况下以及对于完全包含在胶囊中的小肿瘤如何预测生化复发。已经显示出计算机提取的纹理特征可以定量地描述MRI上的肿瘤微结构和形态,从而为肿瘤的侵袭性提供线索。但是,尽管已将计算机提取的特征用于预测癌症的存在和分级,但尚未在预测生化复发风险的背景下对其进行评估。这项工作旨在评估计算机提取的纹理特征在预测一组接受1.5特斯拉(T)T2w MRI预处理的患者中的生化复发风险中的作用。我们从T2w MRI中提取一阶统计量,梯度,共现和Gabor小波特征的组合。为了确定其中哪些T2w MRI纹理特征是PSA失败的潜在独立预后标志物,我们实施了偏最小二乘(PLS)方法将数据嵌入低维空间,然后使用投影中的可变重要性(VIP)方法量化各个特征对PLS嵌入分类的贡献。尽管1.5 T MRI数据的分辨率较差,我们仍能够识别出三个Gabor小波特征,这些特征与Logistic回归分类器结合使用,可在接收器工作特征曲线下产生0.83的区域,以预测生化复发的可能性。放射治疗之后。与Kattan列线图和语义MRI属性相比,这三种计算机提取的特征预测生化复发风险的能力得到了证明。

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