Center for Artificial Intelligence in Diagnostic Medicine, University of California Irvine Medical Center, 101 The City Drive South, Building 55, Suite 201, Orange, CA, 92868, USA.
Department of Radiology, Columbia University Irving Medical Center, 622 West 168th St., MC 28, New York, NY, 10032, USA.
J Digit Imaging. 2019 Dec;32(6):980-986. doi: 10.1007/s10278-019-00193-4.
Deep learning for MRI detection of sports injuries poses unique challenges. To address these difficulties, this study examines the feasibility and incremental benefit of several customized network architectures in evaluation of complete anterior cruciate ligament (ACL) tears. Two hundred sixty patients, ages 18-40, were identified in a retrospective review of knee MRIs obtained from September 2013 to March 2016. Half of the cases demonstrated a complete ACL tear (624 slices), the other half a normal ACL (3520 slices). Two hundred cases were used for training and validation, and the remaining 60 cases as an independent test set. For each exam with an ACL tear, coronal proton density non-fat suppressed sequence was manually annotated to delineate: (1) a bounding-box around the cruciate ligaments; (2) slices containing the tear. Multiple convolutional neural network (CNN) architectures were implemented including variations in input field-of-view and dimensionality. For single-slice CNN architectures, validation accuracy of a dynamic patch-based sampling algorithm (0.765) outperformed both cropped slice (0.720) and full slice (0.680) strategies. Using the dynamic patch-based sampling algorithm as a baseline, a five-slice CNN input (0.915) outperformed both three-slice (0.865) and single-slice (0.765) inputs. The final highest performing five-slice dynamic patch-based sampling algorithm resulted in independent test set AUC, sensitivity, specificity, PPV, and NPV of 0.971, 0.967, 1.00, 0.938, and 1.00. A customized 3D deep learning architecture based on dynamic patch-based sampling demonstrates high performance in detection of complete ACL tears with over 96% test set accuracy. A cropped field-of-view and 3D inputs are critical for high algorithm performance.
深度学习在 MRI 检测运动损伤方面具有独特的挑战。为了解决这些困难,本研究探讨了几种定制网络架构在评估完整前交叉韧带(ACL)撕裂中的可行性和增量效益。回顾性分析了 2013 年 9 月至 2016 年 3 月膝关节 MRI 中 260 例 18-40 岁患者。一半的病例显示完全 ACL 撕裂(624 个切片),另一半为正常 ACL(3520 个切片)。200 例用于训练和验证,其余 60 例作为独立测试集。对于每个 ACL 撕裂的检查,冠状质子密度非脂肪抑制序列均通过手动注释来描绘:(1)围绕交叉韧带的边界框;(2)包含撕裂的切片。实现了多种卷积神经网络(CNN)架构,包括输入视场和维度的变化。对于单切片 CNN 架构,基于动态补丁的采样算法的验证准确性(0.765)优于裁剪切片(0.720)和全切片(0.680)策略。使用动态补丁的采样算法作为基线,五切片 CNN 输入(0.915)优于三切片(0.865)和单切片(0.765)输入。最终性能最高的五切片动态补丁采样算法在独立测试集 AUC、敏感性、特异性、PPV 和 NPV 方面的表现分别为 0.971、0.967、1.00、0.938 和 1.00。基于动态补丁采样的定制 3D 深度学习架构在检测完整 ACL 撕裂方面具有出色的性能,测试集准确率超过 96%。裁剪视场和 3D 输入对于高算法性能至关重要。