Shahait Mohammed, Usamentiaga Ruben, Tong Yubing, Sandberg Alex, Lee David I, Udupa Jayaram K, Torigian Drew A
Department of Surgery, Clemenceau Medical Center, Dubai P.O. Box 124412, United Arab Emirates.
Department of Computer Science and Engineering, University of Oviedo, 33204 Gijon, Spain.
Diagnostics (Basel). 2023 Sep 11;13(18):2913. doi: 10.3390/diagnostics13182913.
The exact role of the levator ani (LA) muscle in male continence remains unclear, and so this study aims to shed light on the topic by characterizing MRI-derived radiomic features of LA muscle and their association with postoperative incontinence in men undergoing prostatectomy.
In this retrospective study, 140 patients who underwent robot-assisted radical prostatectomy (RARP) for prostate cancer using preoperative MRI were identified. A biomarker discovery approach based on the optimal biomarker (OBM) method was used to extract features from MRI images, including morphological, intensity-based, and texture-based features of the LA muscle, along with clinical variables. Mathematical models were created using subsets of features and were evaluated based on their ability to predict continence outcomes.
Univariate analysis showed that the best discriminators between continent and incontinent patients were patients age and features related to LA muscle texture. The proposed feature selection approach found that the best classifier used six features: age, LA muscle texture properties, and the ratio between LA size descriptors. This configuration produced a classification accuracy of 0.84 with a sensitivity of 0.90, specificity of 0.75, and an area under the ROC curve of 0.89.
This study found that certain patient factors, such as increased age and specific texture properties of the LA muscle, can increase the odds of incontinence after RARP. The results showed that the proposed approach was highly effective and could distinguish and predict continents from incontinent patients with high accuracy.
耻骨直肠肌(LA)在男性控尿中的具体作用尚不清楚,因此本研究旨在通过描述LA肌肉的MRI衍生放射组学特征及其与前列腺切除术后男性尿失禁的关系来阐明这一主题。
在这项回顾性研究中,确定了140例使用术前MRI进行机器人辅助根治性前列腺切除术(RARP)治疗前列腺癌的患者。基于最佳生物标志物(OBM)方法的生物标志物发现方法用于从MRI图像中提取特征,包括LA肌肉的形态学、基于强度和基于纹理的特征,以及临床变量。使用特征子集创建数学模型,并根据其预测控尿结果的能力进行评估。
单因素分析表明,控尿和尿失禁患者之间的最佳区分因素是患者年龄和与LA肌肉纹理相关的特征。所提出的特征选择方法发现,最佳分类器使用六个特征:年龄、LA肌肉纹理属性以及LA大小描述符之间的比率。这种配置产生的分类准确率为0.84,灵敏度为0.90,特异性为0.75,ROC曲线下面积为0.89。
本研究发现,某些患者因素,如年龄增加和LA肌肉的特定纹理属性,会增加RARP术后尿失禁的几率。结果表明,所提出的方法非常有效,能够高精度地区分和预测控尿和尿失禁患者。