Predicting individual hemoglobin abnormalities using longitudinal data in clinical practice.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Maliheh Namazkhan, Karel Jan van Tuijn, Maurits Kaptein, Remco van Horssen
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引用次数: 0

Abstract

Background: In preventive medicine, the promotion of health and well-being through early detection and intervention is crucial to preventing the development of diseases. This study aims to predict potential abnormalities in hemoglobin levels before they occur, using individualised observations within normal ranges.

Methods: We utilise a dataset generated over seven years, comprising 30,000 patients. Multiple prediction models are employed to identify hemoglobin trends within individuals and predict their next-to-measure hemoglobin value based on past measurements. We focus on whether, at a specific point in time, the individual's values are likely to run outside of the individual 'normal' bounds. A Generalised Additive Model is explored as a plausible approach for predicting future individual hemoglobin values. By calculating confidence intervals for predicted hemoglobin values, we evaluate prediction uncertainty, while assessing the percentage of accurate predictions within these intervals to gauge the reliability of our model's prediction.

Results: We find that for 88.47% of the cases, our model accurately predicts whether patients' hemoglobin levels will stay within individual 'normal' bounds or deviate from them, demonstrating its effectiveness in identifying 'out-of-normal' measurements.

Conclusions: The findings hold practical significance, potentially reducing unnecessary blood draws and preventing the onset of abnormal hemoglobin levels through preventive healthcare interventions or digital lifestyle coaching. Moreover, early detection and intervention can significantly impact individual patients by preventing disease development.

在临床实践中使用纵向数据预测个体血红蛋白异常。
背景:在预防医学中,通过早期发现和干预促进健康和福祉对预防疾病的发展至关重要。本研究旨在预测血红蛋白水平的潜在异常,在它们发生之前,使用正常范围内的个体化观察。方法:我们使用了一个超过7年的数据集,包括30,000名患者。使用多个预测模型来识别个体内的血红蛋白趋势,并根据过去的测量结果预测其下一个测量血红蛋白值。我们关注的是,在特定的时间点上,个体的价值是否可能超出个体的“正常”界限。一个广义的加性模型被探索作为一个合理的方法来预测未来的个人血红蛋白值。通过计算预测血红蛋白值的置信区间,我们评估预测的不确定性,同时评估在这些区间内准确预测的百分比,以衡量我们模型预测的可靠性。结果:我们发现,在88.47%的病例中,我们的模型准确地预测了患者的血红蛋白水平是保持在个人“正常”范围内还是偏离他们,证明了它在识别“异常”测量方面的有效性。结论:研究结果具有实际意义,可以通过预防性保健干预或数字生活方式指导,减少不必要的抽血,预防血红蛋白水平异常的发生。此外,早期发现和干预可以通过预防疾病发展对个体患者产生重大影响。
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
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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