温室气体
梯度升压
电
碳足迹
环境科学
吨
消费(社会学)
医疗保健
业务
医学
环境卫生
计算机科学
经济
废物管理
工程类
经济增长
生物
电气工程
机器学习
社会学
随机森林
社会科学
生态学
作者
Hao Yin,Bhavna Sharma,Howard Hu,Fei Liu,Manjot Kaur,Gary Cohen,Rob McConnell,Sandrah P. Eckel
标识
DOI:10.1016/j.cesys.2023.100155
摘要
Health care accounts for 9–10% of greenhouse gas (GHG) emissions in the United States. Strategies for monitoring these emissions at the hospital level are needed to decarbonize the sector. However, data collection to estimate emissions is challenging, especially for smaller hospitals. We explored the potential of gradient boosting machines (GBM) to impute missing data on resource consumption in the 2020 survey of a consortium of 283 hospitals participating in Practice Greenhealth. GBM imputed missing values for selected variables in order to predict electricity use (R2 = 0.82) and beef consumption (R2 = 0.82) and anesthetic gas desflurane use (R2 = 0.51), using administrative data readily available for most hospitals. After imputing missing consumption data, estimated GHG emissions associated with these three examples totaled over 3 million metric tons of CO2 equivalent emissions (MTCO2e). Specifically, electricity consumption had the largest total carbon footprint (2.4 MTCO2e), followed by beef (0.6 million MTCO2e) and desflurane consumption (0.03 million MTCO2e) across the 283 hospitals. The approach should be applicable to other sources of hospital GHGs in order to estimate total emissions of individual hospitals and to refine survey questions to help develop better intervention strategies.
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