Ghaffar Umar, Olsen Rikke, Deo Atharva, Yang Cherine, Varghese Jonathan, Tsai Randy G, Heard John, Dadashian Eman, Prentice Carter, Wager Peter, Ma Runzhuo, Wagner Christian, Sonn Geoffrey A, Goh Alvin C, Gonzalez-Hernandez Graciela, Hung Andrew J
Department of Urology, Cedars Sinai Medical Center, Los Angeles, CA, USA.
University of Southern California, Los Angeles, CA, USA.
J Robot Surg. 2025 Jun 2;19(1):257. doi: 10.1007/s11701-025-02412-3.
The nerve-sparing step of prostatectomy is crucial for post-operative sexual recovery, and excessive countertraction on the neurovascular bundle (NVB) during retraction has been associated with adverse sexual function outcomes. Our objective is to utilize computer vision to quantitatively assess the degree of this countertraction to study its impact on post-operative sexual recovery. Sixty-four nerve-sparing prostatectomy videos were used to extract snapshots prior to and at the maximum point of retraction gestures on the NVB. Semantic image segmentation, conducted with the Computer Vision Annotation Tool (CVAT), was used to label features such as the proportion of tissue grasped relative to retractor size and tissue stretch (measured by percent area increase and angular deviation from baseline). Supervised machine learning models, including Random Forest, Multi-layer Perceptron, and XGBoost, were then developed to predict the likelihood of erections sufficient for intercourse at a 12-month post-operative follow-up. Predictions were based on clinical and surgical gesture features (age, PSA, extent of nerve sparing, and post-operative Gleason scores, number of NVB retractions) alone and in combination with segmentation-derived features. One thousand one hundred four instances of NVB retraction were labeled. For patients with insufficient erectile function for intercourse at the 12-month follow-up, the mean angular deviation, percent area increase, and proportion of tissue grasped were 25.80° (SD 13.1), 41.81% (SD 33.3), and 0.310 (SD 0.093), respectively. In contrast, for patients with sufficient erectile function, these values were 21.07° (SD 7.4), 20.10% (SD 12.5), and 0.206 (SD 0.127), respectively. Integrating segmentation-derived features into the models enhanced predictive performance, with the AUC increasing from 0.78 (IQR 0.56-0.98) to 0.83 (IQR 0.63-1.00) for the Random Forest model, from 0.61 (IQR 0.35-0.85) to 0.74 (IQR 0.50-0.94) for the Multi-layer Perceptron, and from 0.70 (IQR 0.44-0.92) to 0.78 (IQR 0.58-0.97) for XGBoost. Delicate handling of the neurovascular bundle is crucial for better post-operative sexual recovery, and computer vision can provide an objective assessment of retraction on the NVB, offering insights beyond clinical and gesture features alone.
前列腺切除术的神经保留步骤对术后性功能恢复至关重要,而在牵拉过程中对神经血管束(NVB)过度的反向牵拉与不良性功能结果相关。我们的目标是利用计算机视觉定量评估这种反向牵拉的程度,以研究其对术后性功能恢复的影响。使用64个神经保留前列腺切除术视频,在对NVB的牵拉手势开始前和最大牵拉点提取快照。使用计算机视觉标注工具(CVAT)进行语义图像分割,以标记诸如相对于牵开器大小所抓取组织的比例和组织拉伸(通过面积增加百分比和相对于基线的角度偏差来衡量)等特征。然后开发了包括随机森林、多层感知器和XGBoost在内的监督机器学习模型,以预测术后12个月随访时足以进行性交的勃起可能性。预测仅基于临床和手术手势特征(年龄、前列腺特异性抗原、神经保留程度、术后Gleason评分、NVB牵拉次数),并结合分割衍生特征。对1104例NVB牵拉情况进行了标记。对于在12个月随访时勃起功能不足以进行性交的患者,平均角度偏差、面积增加百分比和所抓取组织的比例分别为25.80°(标准差13.1)、41.81%(标准差33.3)和0.310(标准差0.093)。相比之下,对于勃起功能足够的患者,这些值分别为21.07°(标准差7.4)、20.10%(标准差12.5)和0.206(标准差0.127)。将分割衍生特征整合到模型中可提高预测性能,随机森林模型的曲线下面积(AUC)从0.78(四分位距0.56 - 0.98)增加到0.83(四分位距0.63 - 1.00),多层感知器模型从0.61(四分位距0.35 - 0.85)增加到0.74(四分位距0.50 - 0.94),XGBoost模型从0.70(四分位距0.44 - 0.92)增加到0.78(四分位距0.58 - 0.97)。精细处理神经血管束对更好的术后性功能恢复至关重要,计算机视觉可以提供对NVB牵拉的客观评估,提供超越临床和手势特征的见解。