Predictive Modeling of Hyperparathyroidism in Patients With Benign Thyroid Nodules: A Cohort Study Using the Vizient Database.

IF 2.2 3区 医学 Q1 OTORHINOLARYNGOLOGY
Christopher S Hollenbeak, Qiang Hao, Melody Greer, Totton A Hollenbeak, Brendan C Stack
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引用次数: 0

Abstract

Importance: Predicting primary hyperparathyroidism in data may facilitate earlier diagnosis and treatment.

Objective: Primary Hyperparathyroidism (pHPT) is the leading cause of hypercalcemia and up to 75% of hypercalcemic patients go undiagnosed. The purpose of this study was to examine the use of predictive modeling using a large clinical database to predict pHPT in patients with benign thyroid nodules.

Design: Retrospective analysis and predictive modeling of pHPT using a large discharge database. A predictive model of pHPT was created using logistic regression and compared to three machine learning algorithms: a Gaussian naive Bayes classifier, a stochastic gradient descent classifier, and a histogram-based gradient boosting classifier.

Setting: Vizient hospital discharge database from over 1000 hospitals including academic health centers.

Participants: Data from the Vizient Clinical Database (CDB), 2 541 901 patients with benign thyroid nodules were identified between 2020 and 2023, of whom 83 555 (3.29%) had pHPT. INTERVENTION(S) (FOR CLINICAL TRIALS) OR EXPOSURE(S) (FOR OBSERVATIONAL STUDIES): Analyses controlled for demographics (age, sex, race), comorbidities (body mass index (BMI), diabetes, hypertension, smoking status, renal disease) and use of proton pump inhibitors and bisphosphonates.

Main outcome(s) and measure(s): The primary outcome measure was the presence of pHPT, which was identified using ICD-10 codes. Model performance was compared using the area under the receiver operating characteristics (ROC) curve.

Results: In the baseline predictive model, several demographic characteristics were significant predictors of pHPT. The logistic regression model had an area under the ROC curve of 68.1%, which was lower than that of the histogram gradient boosting model (68.7%) but equivalent to the gradient descent classifier (68.1%). Furthermore, the logistic regression model correctly classified 80.4% of pHPT cases, compared to 80.5% for both the histogram gradient boosting classifier and the gradient descent classifier. A threshold of 5% yielded a sensitivity of 38.5% and specificity of 81.8% for logistic regression.

Conclusions and relevance: Predictive modeling of pHPT among patients with benign thyroid nodules is possible using a large clinical database. The predictive equation could be built into decision support systems to alert clinicians to potentially undiagnosed pHPT and aid in timely diagnosis and treatment of pHPT.

良性甲状腺结节患者甲状旁腺功能亢进的预测模型:使用Vizient数据库的队列研究。
重要性:数据预测原发性甲状旁腺功能亢进可能有助于早期诊断和治疗。目的:原发性甲状旁腺功能亢进症(pHPT)是导致高钙血症的主要原因,高达75%的高钙血症患者未被确诊。本研究的目的是通过一个大型临床数据库来检验预测模型在良性甲状腺结节患者中pHPT的应用。设计:使用大型放电数据库对pHPT进行回顾性分析和预测建模。使用逻辑回归创建了pHPT的预测模型,并与三种机器学习算法进行了比较:高斯朴素贝叶斯分类器、随机梯度下降分类器和基于直方图的梯度增强分类器。设置:来自1000多家医院的Vizient医院出院数据库,包括学术卫生中心。参与者:来自Vizient临床数据库(CDB)的数据显示,2020年至2023年期间发现了2541401例良性甲状腺结节患者,其中83555例(3.29%)患有pHPT。干预(S)(用于临床试验)或暴露(S)(用于观察性研究):控制人口统计学(年龄、性别、种族)、合并症(体重指数(BMI)、糖尿病、高血压、吸烟状况、肾脏疾病)和质子泵抑制剂和双膦酸盐使用的分析。主要结果和测量方法:主要结果测量方法是pHPT的存在,使用ICD-10代码进行识别。采用受试者工作特征(ROC)曲线下面积对模型性能进行比较。结果:在基线预测模型中,几个人口统计学特征是pHPT的重要预测因子。logistic回归模型的ROC曲线下面积为68.1%,低于直方图梯度增强模型(68.7%),但与梯度下降分类器(68.1%)相当。此外,逻辑回归模型对pHPT病例的正确率为80.4%,而直方图梯度增强分类器和梯度下降分类器的正确率为80.5%。阈值为5%,逻辑回归的敏感性为38.5%,特异性为81.8%。结论和相关性:利用大型临床数据库对良性甲状腺结节患者的pHPT进行预测建模是可能的。该预测方程可以构建到决策支持系统中,提醒临床医生潜在的未诊断的pHPT,并帮助及时诊断和治疗pHPT。
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来源期刊
CiteScore
7.00
自引率
6.90%
发文量
278
审稿时长
1.6 months
期刊介绍: Head & Neck is an international multidisciplinary publication of original contributions concerning the diagnosis and management of diseases of the head and neck. This area involves the overlapping interests and expertise of several surgical and medical specialties, including general surgery, neurosurgery, otolaryngology, plastic surgery, oral surgery, dermatology, ophthalmology, pathology, radiotherapy, medical oncology, and the corresponding basic sciences.
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