Greenhouse gas emissions due to long-term data storage of CT with reformats and strategies for mitigation.

IF 4.7 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yifan Jia, Michael Deng, Rebecca Burger, Sarah Sheard, Kate Hanneman, Moran Drucker Iarovich, Evis Sala, Giacomo Avesani, Rowland O Illing, Andrea G Rockall
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引用次数: 0

Abstract

Objectives: Medical image data storage and associated greenhouse gas (GHG) emissions are increasing. We aimed to measure non-essential storage and model mitigation strategies.

Materials and methods: The proportion of stored post-processed series (reformats and reconstructions) was retrospectively recorded in 183 baseline staging CT chest-abdomen-pelvis studies (CT-CAP) for endometrial cancer in a UK referral centre between 2013 and 2016 (Cohort A). File size (megabytes, MB) of each series was recorded for 30 studies (Cohort B) and compared with 100 Canadian studies (Cohort C), contextualised by a survey of protocols across 17 global centres (including Cohort C). Storage-associated GHG emissions were modelled over 20 years for various mitigation strategies.

Results: Post-processed series were stored in 179/183 (97%) of cohort A, 29/30 (97%) of cohort B and 16/17 (94%) of global centres. Median file size was 787 MB (IQR 460, 1257) for the entire CT study (all stored series) and 290 MB (224, 355) for the acquired axial series alone. On-premises storage of all series for new UK endometrial cancer baseline studies 2020-2040 is estimated to generate 381 metric tons CO2 equivalent (MTCO2e). Over this period, modelled mitigation strategies achieved emission reductions of 69% by storing only acquired axial series (117MTCO2e), 82% combining axial-only with cloud storage (70MTCO2e), 81% combining axial-only with an 8-year data retention policy (72MTCO2e), and 89% combining all three strategies (43MTCO2e).

Conclusion: CT data storage has a large environmental cost, necessitating global action. Various mitigation strategies are achievable in reducing storage-related emissions by up to 89%.

Key points: Question Storage of non-essential post-processed CT image series contributes significantly to the accumulating image data storage-associated GHG emissions burden. Findings Modelling predicts emission savings of 69% by avoiding non-essential series storage in staging CTs of UK endometrial cancer patients, with comparable savings globally, based on current practice. Clinical relevance GHG emissions can be substantially reduced by not storing non-essential CT reformats, a mitigation that can be implemented immediately by radiologists. Further GHG mitigation is achievable using cloud storage and data-retention policies.

CT长期数据存储造成的温室气体排放和格式调整及缓解战略。
目的:医学图像数据存储和相关的温室气体(GHG)排放正在增加。我们的目标是测量非必要的存储和建模缓解策略。材料和方法:回顾性记录2013年至2016年英国转诊中心183例子宫内膜癌基线分期CT胸腹骨盆研究(CT- cap)中存储的后处理序列(重新格式化和重建)的比例(队列a)。每个系列的文件大小(兆字节,MB)记录了30项研究(队列B),并与100项加拿大研究(队列C)进行了比较,背景是对17个全球中心(包括队列C)的协议进行了调查。针对各种缓解战略,模拟了20多年来与储存相关的温室气体排放。结果:处理后的序列存储在179/183(97%)队列A、29/30(97%)队列B和16/17(94%)全球中心。整个CT研究(所有存储序列)的中位文件大小为787 MB (IQR 460,1257),仅获得的轴向序列的中位文件大小为290 MB(224,355)。2020-2040年新英国子宫内膜癌基线研究的所有系列的本地存储估计产生381公吨二氧化碳当量(MTCO2e)。在此期间,模拟的缓解策略通过仅存储获取的轴向序列(1.17亿吨二氧化碳当量)实现了69%的减排,82%将纯轴向与云存储相结合(70亿吨二氧化碳当量),81%将纯轴向与8年数据保留政策相结合(72亿吨二氧化碳当量),89%将所有三种策略相结合(43亿吨二氧化碳当量)。结论:CT数据存储具有较大的环境成本,需要采取全球行动。可以采取各种缓解战略,将与储能有关的排放减少89%。非必要的后处理CT图像序列的存储会增加图像数据存储相关的温室气体排放负担。研究结果:建模预测,通过避免英国子宫内膜癌患者分期ct的非必要系列储存,可节省69%的排放,根据目前的实践,全球可节省相当的排放。临床相关的温室气体排放可以通过不存储非必要的CT重新格式化而大大减少,这一缓解措施可以由放射科医生立即实施。通过使用云存储和数据保留策略,可以进一步减少温室气体排放。
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
European Radiology
European Radiology 医学-核医学
CiteScore
11.60
自引率
8.50%
发文量
874
审稿时长
2-4 weeks
期刊介绍: European Radiology (ER) continuously updates scientific knowledge in radiology by publication of strong original articles and state-of-the-art reviews written by leading radiologists. A well balanced combination of review articles, original papers, short communications from European radiological congresses and information on society matters makes ER an indispensable source for current information in this field. This is the Journal of the European Society of Radiology, and the official journal of a number of societies. From 2004-2008 supplements to European Radiology were published under its companion, European Radiology Supplements, ISSN 1613-3749.
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