Explainable Deep Learning Approaches for Risk Screening of Periodontitis.

B Suh, H Yu, J-K Cha, J Choi, J-W Kim
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Abstract

Several pieces of evidence have been reported regarding the association between periodontitis and systemic diseases. Despite the emphasized significance of prevention and early diagnosis of periodontitis, there is still a lack of a clinical tool for early screening of this condition. Therefore, this study aims to use explainable artificial intelligence (XAI) technology to facilitate early screening of periodontitis. This is achieved by analyzing various clinical features and providing individualized risk assessment using XAI. We used 1,012 variables for a total of 30,465 participants data from National Health and Nutrition Examination Survey (NHANES). After preprocessing, 9,632 and 5,601 participants were left for all age groups and the over 50 y age group, respectively. They were used to train deep learning and machine learning models optimized for opportunistic screening and diagnosis analysis of periodontitis based on Centers for Disease Control and Prevention/ American Academy of Pediatrics case definition. Local interpretable model-agnostic explanations (LIME) were applied to evaluate potential associated factors, including demographic, lifestyle, medical, and biochemical factors. The deep learning models showed area under the curve values of 0.858 ± 0.011 for the opportunistic screening and 0.865 ± 0.008 for the diagnostic dataset, outperforming baselines. By using LIME, we elicited important features and assessed the combined impact and interpretation of each feature on individual risk. Associated factors such as age, sex, diabetes status, tissue transglutaminase, and smoking status have emerged as crucial features that are about twice as important than other features, while arthritis, sleep disorders, high blood pressure, cholesterol levels, and overweight have also been identified as contributing factors to periodontitis. The feature contribution rankings generated with XAI offered insights that align well with clinically recognized associated factors for periodontitis. These results highlight the utility of XAI in deep learning-based associated factor analysis for detecting clinically associated factors and the assistance of XAI in developing early detection and prevention strategies for periodontitis in medical checkups.

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用于牙周炎风险筛查的可解释深度学习方法。
关于牙周炎与全身性疾病之间的关联,已有多项证据报道。尽管牙周炎的预防和早期诊断意义重大,但目前仍缺乏早期筛查牙周炎的临床工具。因此,本研究旨在利用可解释人工智能(XAI)技术促进牙周炎的早期筛查。这是通过分析各种临床特征并利用 XAI 提供个性化风险评估来实现的。我们使用了来自美国国家健康与营养调查(NHANES)的 30465 名参与者数据中的 1012 个变量。经过预处理后,所有年龄组和 50 岁以上年龄组的参与者数据分别为 9,632 人和 5,601 人。根据美国疾病控制和预防中心/美国儿科学会的病例定义,这些数据被用于训练优化的深度学习和机器学习模型,以进行牙周炎的机会性筛查和诊断分析。本地可解释模型-诊断解释(LIME)用于评估潜在的相关因素,包括人口统计、生活方式、医疗和生化因素。深度学习模型显示,机会性筛查的曲线下面积值为 0.858 ± 0.011,诊断数据集的曲线下面积值为 0.865 ± 0.008,均优于基线值。通过使用 LIME,我们得出了一些重要特征,并评估了每个特征对个体风险的综合影响和解释。年龄、性别、糖尿病状况、组织转谷氨酰胺酶和吸烟状况等相关因素成为关键特征,其重要性是其他特征的两倍,而关节炎、睡眠障碍、高血压、胆固醇水平和超重也被认为是牙周炎的诱因。用 XAI 生成的特征贡献排名提供的见解与临床公认的牙周炎相关因素非常吻合。这些结果凸显了 XAI 在基于深度学习的关联因素分析中检测临床关联因素的实用性,以及 XAI 在体检中协助制定牙周炎早期检测和预防策略的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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