Medical meteorological forecast for ischemic stroke: random forest regression vs long short-term memory model.

IF 3 3区 地球科学 Q2 BIOPHYSICS
Yixiu Yang, Mingjie Zhang, Jinghong Zhang, Yajie Zhang, Weining Xiong, Yipeng Ding, Shuyuan Chu, Tian Xie
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引用次数: 0

Abstract

Ischemic stroke (IS) is one of the top risk factors for death and disability. Meteorological conditions have an effect on IS attack. In this study, we try to develop models of medical meteorological forecast for IS attack based on machine learning and deep learning algorithms. The medical meteorological forecast would be beneficial to public health in IS events prevention and treatment. We collected data on IS attacks and climatology in each day from 18th September 2016 to 31th December 2020 in Haikou. Data on IS attacks were from the number of hospital admissions due to IS attack among general population. The random forest (RF) regression and long short-term memory (LSTM) algorithms were respectively used to develop the predictive model based on meteorological data. Performance of the model was assessed by mean squared error (MSE) and root mean squared error (RMSE). A total of 42849 IS attacks was included in this study. IS attacks were significantly decreased in winter. The pattern of climatological data was observed the regularity in seasons. For the performance of RF regression model, the MSE is 243, and the RMSE is 15.6. For LSTM model, the MSE is 36, and the RMSE is 6. In conclusion, LSTM model is more accurate than RF regression model to predict IS attacks in general population based on meteorological data. LSTM model showed acceptable accuracy for the prediction and could be used as medical meteorological forecast to predict IS attack among population according to local climate.

缺血性中风的医学气象预报:随机森林回归与长短期记忆模型。
缺血性中风(IS)是导致死亡和残疾的首要风险因素之一。气象条件对缺血性中风的发作有影响。在这项研究中,我们尝试基于机器学习和深度学习算法开发针对 IS 攻击的医学气象预报模型。医疗气象预报将有利于公共卫生机构预防和治疗 IS 事件。我们收集了海口市2016年9月18日至2020年12月31日期间每天的IS袭击数据和气候数据。IS袭击数据来自普通人群中因IS袭击而入院的人数。在气象数据的基础上,分别使用随机森林(RF)回归和长短期记忆(LSTM)算法建立预测模型。模型的性能通过均方误差(MSE)和均方根误差(RMSE)进行评估。本研究共纳入了 42849 次 IS 袭击。结果表明,IS 在冬季明显减少。气候学数据的模式观察到了季节的规律性。RF 回归模型的 MSE 为 243,RMSE 为 15.6。总之,LSTM 模型比 RF 回归模型更准确地预测了基于气象数据的一般人群中的 IS 攻击。LSTM 模型显示了可接受的预测精度,可用作医疗气象预报,根据当地气候预测人群中的 IS 攻击。
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
6.40
自引率
9.40%
发文量
183
审稿时长
1 months
期刊介绍: The Journal publishes original research papers, review articles and short communications on studies examining the interactions between living organisms and factors of the natural and artificial atmospheric environment. Living organisms extend from single cell organisms, to plants and animals, including humans. The atmospheric environment includes climate and weather, electromagnetic radiation, and chemical and biological pollutants. The journal embraces basic and applied research and practical aspects such as living conditions, agriculture, forestry, and health. The journal is published for the International Society of Biometeorology, and most membership categories include a subscription to the Journal.
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