Development of a machine learning model for the diagnosis of atypical primary hyperparathyroidism

Q3 Medicine
Joseph P. O’Brien , Gustavo Romero-Velez , Salem I. Noureldine , Talia Burneikis , Ludovico Sehnem , Allan Siperstein
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引用次数: 0

Abstract

Background

Atypical primary hyperparathyroidism (PHPT), which includes normocalcemic and normohormonal variants, can be a diagnostic challenge. We sought to create a machine learning model to predict the probability of a patient having atypical presentations of PHPT.

Methods

A model was constructed using logistic regression of PHPT patients and were compared to controls. Variables included sex, body mass index (BMI), calcium, PTH, 25-hydroxyvitamin D, phosphorus, chloride, sodium, alkaline phosphatase, and creatinine. The performance of the model was evaluated using the area under the curve (AUC).

Results

The study included 4987 controls and 433 patients with atypical PHPT. Calcium, PTH, vitamin D, phosphorus, BMI, and sex were found to significantly contribute to the performance of the model, achieving an AUC of 0.999. The sensitivity, specificity, positive and negative predictive values were 92.9 %, 99.7 %, 96.3 % and 99.4 %, respectively.

Conclusion

Machine learning can reliably aid in the recognition of PHPT in patients with atypical variants.

Clinical relevance

When evaluating patients with atypical variants of primary hyperparathyroidism, the clinician needs to be able to identify subtle relationships in the patient laboratory test to make the diagnosis. These relationships can be found with machine learning and incorporated to predictive models which can ease and improve the diagnosis.

开发用于诊断非典型原发性甲状旁腺功能亢进症的机器学习模型
背景非典型原发性甲状旁腺功能亢进症(PHPT)包括正常钙血症和正常激素血症变异型,可能是诊断上的一个难题。我们试图创建一个机器学习模型来预测患者出现 PHPT 非典型表现的概率。变量包括性别、体重指数 (BMI)、钙、PTH、25-羟维生素 D、磷、氯、钠、碱性磷酸酶和肌酐。研究纳入了 4987 名对照组和 433 名非典型 PHPT 患者。研究发现,钙、PTH、维生素 D、磷、体重指数和性别对模型的性能有显著影响,AUC 达到 0.999。灵敏度、特异性、阳性预测值和阴性预测值分别为 92.9 %、99.7 %、96.3 % 和 99.4 %。临床意义在评估原发性甲状旁腺功能亢进症非典型变异型患者时,临床医生需要能够识别患者实验室检测中的微妙关系,以便做出诊断。通过机器学习可以发现这些关系,并将其纳入预测模型,从而简化和改善诊断。
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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来源期刊
Endocrine and Metabolic Science
Endocrine and Metabolic Science Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
2.80
自引率
0.00%
发文量
4
审稿时长
84 days
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