Assessment of Relative Risk for Periodontitis Progression Using Neural Network Modeling: Cohort Retrospective Study

M. Perova, D. D. Samochvalova, А. А. Khalafyan, V. A. Akinshina
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引用次数: 1

Abstract

Background. Currently accepted risk assessments of periodontitis progression are determinants of indirect stability: periodontal pockets, persistent bleeding of the gums, tooth mobility, local risk factors. In the era of case-oriented medicine, a relevant solution would be to choose periodontal therapy according to one-time consideration of the maximum available range of individual risk factors rather than on general clinical guidelines.Objectives. The study was aimed at determining the relative risk of periodontitis progression after active basic therapy using neural network modeling.Methods. A cohort retrospective study was performed on 109 patients of both sexes, aged 30 to 70 years, after basic treatment of chronic periodontitis (mild, moderate and severe) in the period from 1999 to 2016, who were on supportive periodontal therapy (SPT) for 5 years ≤SPT≤ 20 years. The authors considered data from objective examination of the periodontium and categorical indices (24 in total) assessed before treatment, 4–6 months after basic (active) treatment and 5 years ≤SPT≤ 20 years. Following the analysis of descriptive statistics, target quantitative indices were determined for prognostic modeling of treatment outcomes in periodontitis patients and calculating the residual risk of disease progression. Statistical processing of obtained data was carried out using the Statistica 13.3 package (Tibco, USA). Mean values of the indicators at different time points were compared by means of Wilcoxon’s and Signs criteria; Spearman’s rank correlation coefficient was used to evaluate relevance between predictors and target indicators. The level of statistical significance p = 0.05 was accepted in all cases of analysis. DataMining, an automated neural network of Statistica software, was used as a tool to build neural network models. The task of classifying the level of risk of disease progression was solved by means of ROC analysis. The prognostic potential of the model was assessed using sensitivity and specificity measures.Results. The heterogeneous dynamics of predictor variables describing the state of the periodontium was determined. The outcomes of regenerative periodontal surgery, regardless of gender, age of patients and comorbidities, significantly outperformed those of other approaches, due to the formation of a new dentogingival attachment, although to different extent. Another positive functional outcome was recorded in restoring the dentition integrity by implantation, without any mutually damaging effects. Since revealing the interrelationships between indicators is not equivalent to the predictive value, prognostic models were built for target indicators and stratification of the relative risk of periodontitis progression using automated neural networks. The networks with the best prognostic properties were selected out of 1000 automatically built and trained neural networks — double-layer perceptrons. The sensitivity of the relative risk prognostic model on the training, control and test samples made up 90%, 67%, 80%; the specificity of the model made up 81.481%, 85.714%, 100%. Overall, in the cohort, the sensitivity and specificity accounted for 85.937% and 86.666%. The area under the curve (ROC AUC) is 0.859.Conclusion. The use of an artificial intelligence algorithm for the construction of neural networks for target predictors and stratification of the relative risk of periodontitis progression has advantages over classical methods — it is instrumental in solving classification and regression problems with categorical and quantitative predictor variables using data of arbitrary nature of large and small volumes. The practical implementation of the study results is reflected in the development of a relative risk calculator based on a written computer program.
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使用神经网络模型评估牙周炎进展的相对风险:队列回顾性研究
背景。目前接受的牙周炎进展风险评估是间接稳定性的决定因素:牙周袋、牙龈持续出血、牙齿活动、局部危险因素。在以病例为导向的医学时代,一个相关的解决方案是根据单个危险因素的最大可用范围一次性考虑选择牙周治疗,而不是根据一般的临床指南。该研究旨在利用神经网络模型确定积极基础治疗后牙周炎进展的相对风险。回顾性研究1999 ~ 2016年慢性牙周炎(轻、中、重度)基础治疗后接受支持牙周治疗(SPT) 5年≤SPT≤20年的患者109例,年龄30 ~ 70岁,男女均可。作者考虑了治疗前、基础(积极)治疗后4-6个月和5年≤SPT≤20年评估的牙周组织客观检查和分类指标(共24项)的数据。描述性统计分析后,确定目标定量指标,用于牙周炎患者治疗结果的预后建模,并计算疾病进展的剩余风险。使用Statistica 13.3软件包(Tibco, USA)对获得的数据进行统计处理。采用Wilcoxon标准和Signs标准比较各指标在不同时间点的平均值;采用Spearman等级相关系数评价预测因子与目标指标的相关性。所有病例的分析均接受p = 0.05的显著性水平。采用Statistica软件中的自动化神经网络DataMining作为构建神经网络模型的工具。通过ROC分析解决了疾病进展风险水平的分类问题。采用敏感性和特异性方法评估该模型的预后潜力。确定了描述牙周组织状态的预测变量的异质性动态。再生牙周手术的结果,无论性别、患者年龄和合并症,都明显优于其他方法,尽管程度不同,但由于形成了新的牙牙龈附着体。另一个积极的功能结果是通过种植恢复牙列完整性,没有任何相互损害的影响。由于揭示指标之间的相互关系并不等同于预测值,因此使用自动神经网络建立了目标指标和牙周炎进展相对风险分层的预后模型。从1000个自动构建和训练的神经网络中选择具有最佳预测特性的网络-双层感知器。相对风险预后模型对训练样本、对照样本和测试样本的敏感性分别为90%、67%、80%;模型的特异性分别为81.481%、85.714%、100%。总体而言,在队列中,敏感性和特异性分别为85.937%和86.666%。曲线下面积(ROC AUC)为0.859。使用人工智能算法构建神经网络用于目标预测和牙周炎进展的相对风险分层具有优于经典方法的优点-它有助于解决分类和定量预测变量的分类和回归问题,这些预测变量使用任意性质的大容量和小容量数据。研究结果的实际实施反映在基于书面计算机程序的相对风险计算器的开发上。
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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CiteScore
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37
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8 weeks
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