牙齿染色从烟草消费作为慢性疾病的指标:数据分析和机器学习的应用

Koel Bajaj, Reetu Jain
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引用次数: 0

摘要

烟草消费是一个主要的公共卫生问题,因为它与一系列严重的健康问题有关,包括肺癌、心脏病、中风、呼吸系统疾病和许多其他疾病。烟草消费是世界范围内可预防的死亡和疾病的主要原因,估计每年造成700多万人死亡。烟草制品中的主要活性成分是尼古丁,它很容易上瘾。使用烟草制品的人可能会对尼古丁产生身体依赖,这使得戒烟变得非常困难。摄入过多的尼古丁会导致牙釉质染色。本研究的目的是开发机器学习(ML)模型,根据牙齿染色对慢性疾病进行个人分类。本研究分为两个阶段。在第一阶段,需要开发一个智能系统来检测和分类高、中、低牙渍。这一阶段还包括人口统计数据的收集和分析,以从中获得有价值的见解。第二阶段包括训练不同的ML模型,以识别其中隐藏的模式。通过对模型的参数进行调优,将调优后的模型用于慢性疾病的分类。在所有ML模型中,网格搜索逻辑回归(GSLR)的预测效果最好。GSLR模型的训练和测试准确率分别为64%和60%。将模型应用于试验数据,验证了模型的适用性。GSLR模型能够正确分类31例无慢性病患者中的7例和44例慢性病患者中的38例。基于模型的适用性,可以得出结论,该模型能够以牙釉质染色为指标检测慢性疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Teeth Staining from Tobacco Consumption as an Indicator to Chronic Illness: A Data Analytics and Machine Learning Application
Tobacco consumption is a major public health concern because it is associated with a range of serious health problems, including lung cancer, heart disease, stroke, respiratory disease, and many others. Tobacco consumption is a leading cause of preventable death and disease worldwide, and it is estimated to be responsible for over 7 million deaths each year. The primary active ingredient in tobacco products is nicotine, which is highly addictive. People who use tobacco products can become physically dependent on nicotine, which can make it very difficult to quit using tobacco. Too much of nicotine consumption can cause the staining of the dental enamel. The aim of this study is to develop machine learning (ML) model to classify chronic diseases in person based on their dental staining. The study is divided into two phases. In the first phase involves the development of a smart system to detect and categorize the dental stain as high, average and low. This phase also involves the collection of demographic data and its analysis to derive valuable insights from it. The second phase involves training of the different ML models to recognize the hidden pattern in them. The parameters of the ML models are optimized by tuning and then the tuned ML models are employed for classifying the chronic illness. The Grid Searched Logistic Regression (GSLR) showed the best prediction out of all the ML models. The GSLR model showed training and testing accuracy of 64% and 60% respectively. The applicability of the model is ascertained by applying the model to the test data. The GSLR model is able to correctly classify 7 out of the 31 cases of no chronic diseases and 38 out of 44 cases of chronic diseases. Based on the applicability of the model, it can be concluded that the model is capable of detecting chronic diseases with dental enamel staining as an indicator.
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