牙齿脱落、患者特征与冠状动脉钙化

Tuan D Pham, Lifong Zou, Mangala Patel, Simon Holmes, Paul Coulthard
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引用次数: 0

摘要

本研究首次将数据科学和机器学习整合到冠状动脉钙化(CAC)评分的分类和预测中,将牙齿脱落和患者特征作为关键输入特征进行研究。通过采用这些先进的分析技术,我们旨在提高将 CAC 评分分为三等分和预测其值的准确性。我们的研究结果表明,患者特征对三级分类特别有效,而牙齿缺失则能更准确地预测 CAC 分数。此外,将患者特征和牙齿缺失结合起来,在识别与 CAC 相关的心血管问题高危人群方面的准确性也有所提高。这项研究对牙齿脱落等口腔健康指标、患者特征和心血管健康之间的关系提出了宝贵的见解,揭示了它们在 CAC 分数的预测建模和分类任务中的潜在作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tooth Loss, Patient Characteristics, and Coronary Artery Calcification
This study, for the first time, explores the integration of data science and machine learning for the classification and prediction of coronary artery calcium (CAC) scores, investigating both tooth loss and patient characteristics as key input features. By employing these advanced analytical techniques, we aim to enhance the accuracy of classifying CAC scores into tertiles and predicting their values. Our findings reveal that patient characteristics are particularly effective for tertile classification, while tooth loss provides more accurate predicted CAC scores. Moreover, the combination of patient characteristics and tooth loss demonstrates improved accuracy in identifying individuals at higher risk of cardiovascular issues related to CAC. This research contributes valuable insights into the relationship between oral health indicators, such as tooth loss, patient characteristics, and cardiovascular health, shedding light on their potential roles in predictive modeling and classification tasks for CAC scores.
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