Gen Dent. 2022 Nov-Dec;70(6):60-64.
Early diagnosis of oral potentially malignant disorders (OPMDs) may be hindered by similar clinical presentations shared between benign oral lesions and OPMDs. The goal of this retrospective pilot study was to assess the use of machine learning (ML) as an adjunctive evaluation in conjunction with conventional comprehensive oral examination of OMPDs. Digital images of 80 deidentified intraoral lesions (40 benign intraoral lesions and 40 OPMDs) were collected. The images, which were previously identified independently by experienced oral pathologists, were used to create 3 datasets: raw images, grayscale images, and enhanced color images. The datasets were subsequently divided into training (n = 60), test (n = 10), and validation (n = 10) groups so that class labels (benign lesion or OMPD) were distributed equally in each group. A cross-validated grid search was used to optimize the hyperparameters of the Extreme Gradient Boosting (XGBoost) classifications model. Predictions were made on the test group and used to optimize the prediction threshold. The final results were validated by predictions based on the validation group. The XGBoost classification model was able to differentiate between benign intraoral lesions and OPMDs with a mean classification accuracy of 70%, sensitivity of 80%, and specificity of 60% when grayscale and enhanced color intraoral images were used. A mean classification accuracy of 50%, sensitivity of 40%, and specificity of 60% were observed when raw intraoral images were used. The results demonstrated that ML may be a promising tool for the diagnosis of OPMDs when used as an adjunct to conventional comprehensive oral examination.
早期诊断口腔潜在恶性疾病(OPMDs)可能会受到良性口腔病变和 OPMDs 之间相似临床特征的阻碍。本回顾性试点研究的目的是评估机器学习(ML)作为常规全面口腔检查的辅助评估在 OPMDs 中的应用。收集了 80 张经鉴定的口腔内病变的数字图像(40 张良性口腔内病变和 40 张 OPMDs)。这些图像先前由经验丰富的口腔病理学家独立识别,用于创建 3 个数据集:原始图像、灰度图像和增强彩色图像。这些数据集随后分为训练集(n=60)、测试集(n=10)和验证集(n=10),以使类别标签(良性病变或 OPMD)在每组中均匀分布。使用交叉验证网格搜索来优化极端梯度提升(XGBoost)分类模型的超参数。在测试组上进行预测,并用于优化预测阈值。最终结果通过基于验证组的预测进行验证。当使用灰度和增强彩色口腔内图像时,XGBoost 分类模型能够区分良性口腔内病变和 OPMDs,平均分类准确率为 70%,敏感性为 80%,特异性为 60%。当使用原始口腔内图像时,平均分类准确率为 50%,敏感性为 40%,特异性为 60%。结果表明,当作为常规全面口腔检查的辅助手段时,ML 可能是 OPMDs 诊断的一种有前途的工具。