Department of Radiology, Beijing Friendship Hospital, Capital Medical University, 95 Yong'an Road, Xicheng District, Beijing, 100050, People's Republic of China.
Jpn J Radiol. 2024 Jan;42(1):69-77. doi: 10.1007/s11604-023-01475-2. Epub 2023 Aug 10.
Imaging diagnosis of stapes fixation (SF) is challenging owing to a lack of definite evidence. We developed a comprehensive machine learning (ML) model to identify SF on ultra-high-resolution CT.
We retrospectively enrolled 109 participants (143 ears) and divided them into the training set (115 ears) and test set (28 ears). Stapes mobility (SF or non-SF) was determined by surgical inspection. In the ML analysis, rectangular regions of interest were placed on consecutive axial slices in the training set. Radiomic features were extracted and fed into the training session. The test set was analyzed using 7 ML models (support vector machine, k nearest neighbor, decision tree, random forest, extra trees, eXtreme Gradient Boosting, and Light Gradient Boosting Machine) and by 2 dedicated neuroradiologists. Diagnostic performance (sensitivity, specificity and accuracy, with surgical findings as the reference) was compared between the radiologists and the optimal ML model by using the McNemar test.
The mean age of the participants was 42.3 ± 17.5 years. The Light Gradient Boosting Machine (LightGBM) model showed the highest sensitivity (0.83), specificity (0.81), accuracy (0.82) and area under the curve (0.88) for detecting SF among the 7 ML models. The neuroradiologists achieved good sensitivities (0.75 and 0.67), moderate-to-good specificities (0.63 and 0.56) and good accuracies (0.68 and 0.61). This model showed no statistical differences with the neuroradiologists (P values 0.289-1.000).
Compared to the neuroradiologists, the LightGBM model achieved competitive diagnostic performance in identifying SF, and has the potential to be a supportive tool in clinical practice.
由于缺乏明确的证据,镫骨固定(SF)的影像学诊断具有挑战性。我们开发了一种全面的机器学习(ML)模型,以识别超高分辨率 CT 上的 SF。
我们回顾性地纳入了 109 名参与者(143 耳),并将其分为训练集(115 耳)和测试集(28 耳)。镫骨活动度(SF 或非 SF)由手术检查确定。在 ML 分析中,在训练集中连续放置了矩形感兴趣区。提取放射组学特征并输入训练会话。使用 7 个 ML 模型(支持向量机、k 最近邻、决策树、随机森林、极端梯度提升和 Light Gradient Boosting Machine)和 2 名专门的神经放射科医生对测试集进行分析。使用 McNemar 检验比较放射科医生和最佳 ML 模型之间的诊断性能(以手术结果为参考的敏感性、特异性和准确性)。
参与者的平均年龄为 42.3±17.5 岁。在 7 个 ML 模型中,Light Gradient Boosting Machine(LightGBM)模型对检测 SF 的敏感性(0.83)、特异性(0.81)、准确性(0.82)和曲线下面积(0.88)最高。神经放射科医生的敏感性(0.75 和 0.67)、中等至良好的特异性(0.63 和 0.56)和良好的准确性(0.68 和 0.61)。该模型与神经放射科医生之间没有统计学差异(P 值为 0.289-1.000)。
与神经放射科医生相比,LightGBM 模型在识别 SF 方面具有竞争力的诊断性能,并有潜力成为临床实践中的支持工具。