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A Predictive Model for Height Tracking in an Adult Male Population in Bangladesh to Reduce Input Errors

机译:孟加拉国成年男性人口身高追踪的预测模型可减少输入错误

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摘要

The advancement of ICT and affordability of medical sensors enable healthcare data to be obtained remotely. Remote healthcare data is erroneous in nature. Detection of errors for remote healthcare data has not been significantly studied. This research aims to design and develop a software system to detect and reduce such healthcare data errors. Enormous research efforts produced error detection algorithms, however, the detection is done at the server side after a substantial amount of data is archived. Errors can be efficiently reduced if the suspicious data can be detected at the source. We took the approach to predict acceptable range of anthropometric data of each patient. We analyzed 40,391 records to monitor the growth patterns. We plotted the anthropometric items e.g., Height, Weight, BMI, Waist and Hip size for males and females. The plots show some patterns based on different age groups. This paper reports one parameter, height of males. We found three groups that can be classified with similar growth patterns: Age group 20–49, no significant change; Age group 50–64, slightly decremented pattern; and Age group 65–100, a drastic height loss. The acceptable range can change over time. The system estimates the updated trend from new health records.
机译:ICT的发展和医疗传感器的可负担性使远程获取医疗保健数据成为可能。远程医疗保健数据本质上是错误的。远程医疗数据错误的检测尚未进行深入研究。这项研究旨在设计和开发一种软​​件系统,以检测和减少此类医疗保健数据错误。大量的研究工作产生了错误检测算法,但是,在大量数据被存档之后,才在服务器端进行检测。如果可以在源头检测到可疑数据,则可以有效地减少错误。我们采用这种方法来预测每个患者的人体测量数据的可接受范围。我们分析了40,391条记录,以监测增长模式。我们绘制了男性和女性的人体测量项目,例如身高,体重,BMI,腰围和臀围大小。这些图显示了基于不同年龄组的一些模式。本文报告了一个参数,即雄性的身高。我们发现可以归类为具有相似增长模式的三个组:20-49岁年龄组,无明显变化; 50-64岁年龄段,年龄略有下降; 65至100岁年龄段,身高急剧下降。可接受的范围会随时间变化。系统根据新的健康记录估算更新的趋势。

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