Department of Preventive Dental Science, Jazan University, College of Dentistry, Jazan, Saudi Arabia.
Department of Maxillofacial Surgery and Diagnostic Sciences, Jazan University, College of Dentistry, Jazan, Saudi Arabia.
J Oral Pathol Med. 2021 May;50(5):444-450. doi: 10.1111/jop.13157. Epub 2021 Jan 17.
Oral cancer requires early diagnosis and treatment to increase the chances of survival. This study aimed to develop an artificial neural network model that helps to predict the individuals' risk of developing oral cancer based on data on risk factors, systematic medical condition, and clinic-pathological features.
A popular data mining algorithm artificial neural network was used for developing the artificial intelligence-based prediction model. A total of 29 variables that were associated with the patients were used for developing the model. The dataset was randomly split into the training dataset 54 (75%) cases and testing dataset 19 (25%) cases. All records and observations were reviewed by Board-certified oral pathologist.
A total of 73 patients met the eligibility criteria. Twenty-two (30.13%) were benign cases, and 51 (69.86%) were malignant cases. Thirty-seven were female, and 36 were male, with a mean age of 63.09 years. Our analysis displayed that the average sensitivity and specificity of ANN for oral cancer prediction based on the 10-fold cross-validation analysis was 85.71% (95% confidence interval [CI], 57.19-98.22) and 60.00% (95% CI, 14.66-94.73), respectively. The accuracy of ANN for oral cancer prediction was 78.95% (95% CI, 54.43-931.95).
Our results suggest that this machine-learning technique has the potential to help in oral cancer screening and diagnosis based on the datasets. The results demonstrate that the artificial neural network could perform well in estimating the probability of malignancy and improve the positive predictive value that could help to predict the individuals' risk of developing OC based on knowledge of their risk factors, systemic medical conditions, and clinic-pathological data.
口腔癌需要早期诊断和治疗,以提高生存机会。本研究旨在开发一种基于数据的人工神经网络模型,该模型可根据危险因素、系统医学状况和临床病理特征,帮助预测个体发生口腔癌的风险。
采用一种流行的数据挖掘算法人工神经网络来开发人工智能预测模型。共使用 29 个与患者相关的变量来开发模型。数据集随机分为训练数据集 54 例(75%)和测试数据集 19 例(25%)。所有记录和观察结果均由经董事会认证的口腔病理学家进行审查。
共有 73 名患者符合入选标准。22 例(30.13%)为良性病例,51 例(69.86%)为恶性病例。37 例为女性,36 例为男性,平均年龄为 63.09 岁。我们的分析显示,基于 10 折交叉验证分析,ANN 预测口腔癌的平均灵敏度和特异性分别为 85.71%(95%CI,57.19%-98.22%)和 60.00%(95%CI,14.66%-94.73%)。ANN 预测口腔癌的准确率为 78.95%(95%CI,54.43%-931.95%)。
我们的研究结果表明,这种机器学习技术具有基于数据集辅助口腔癌筛查和诊断的潜力。结果表明,人工神经网络可以很好地估计恶性肿瘤的概率,并提高阳性预测值,这有助于根据个体的危险因素、系统医学状况和临床病理数据预测其发生 OC 的风险。