Objectives: To explore the capacity of deep learning algorithm to further streamline and optimize urethral plate (UP) quality appraisal on 2D images using the plate objective scoring tool (POST), aiming to increase the objectivity and reproducibility of UP appraisal in hypospadias repair. Methods: The five key POST landmarks were marked by specialists in a 691-image dataset of prepubertal boys undergoing primary hypospadias repair. This dataset was then used to develop and validate a deep learning-based landmark detection model. The proposed framework begins with glans localization and detection, where the input image is cropped using the predicted bounding box. Next, a deep convolutional neural network (CNN) architecture is used to predict the coordinates of the five POST landmarks. These predicted landmarks are then used to assess UP quality in distal hypospadias. Results: The proposed model accurately localized the glans area, with a mean average precision (mAP) of 99.5% and an overall sensitivity of 99.1%. A normalized mean error (NME) of 0.07152 was achieved in predicting the coordinates of the landmarks, with a mean squared error (MSE) of 0.001 and a 20.2% failure rate at a threshold of 0.1 NME. Conclusions: This deep learning application shows robustness and high precision in using POST to appraise UP quality. Further assessment using international multi-centre image-based databases is ongoing. External validation could benefit deep learning algorithms and lead to better assessments, decision-making and predictions for surgical outcomes.
翻译:目标: 探索深度学习算法的能力,以进一步精简和优化使用板块目标评分工具(POST)对 2D 图像的尿质评估,进一步优化和优化尿质板(UP) 质量评估,目的是提高在质差修理过程中对 UP 进行评估的客观性和可复制性。 方法: 5个关键的 POST 里程碑由专家在691个正在接受初级低皮层修复的男孩的图像数据集中标出。 这个数据集随后被用来开发和验证一个深层学习的里程碑探测模型。 拟议的框架首先从 glans 本地化和检测开始,输入图像在其中使用预测的精确度框框进行裁剪切。 下一步,一个深层神经神经网络(CNNNN)架构用于预测5个POST 标志的坐标。 这些预测标志随后用于评估低皮质的男孩质量。 结果: 拟议的模型精确地将 glans区域精确定位,平均精确度为99. 5%,总体敏感度为99.1%。 一个标准化的平均错误(NME),在20. 07152 和 massimalimalimalimalalalal 的精确度评估中,在使用20: 的精确度的精确度评估中以20: