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基于机器学习的脑肿瘤手术血液制品制备策略的经济影响。

Economic impact of a machine learning-based strategy for preparation of blood products in brain tumor surgery.

机构信息

Division of Neurosurgery, Department of Surgery, Faculty of Medicine, Prince of Songkla University, Songkhla, Thailand.

出版信息

PLoS One. 2022 Jul 1;17(7):e0270916. doi: 10.1371/journal.pone.0270916. eCollection 2022.

Abstract

BACKGROUND

Globally, blood donation has been disturbed due to the pandemic. Consequently, the optimization of preoperative blood preparation should be a point of concern. Machine learning (ML) is one of the modern approaches that have been applied by physicians to help decision-making. The main objective of this study was to identify the cost differences of the ML-based strategy compared with other strategies in preoperative blood products preparation. A secondary objective was to compare the effectiveness indexes of blood products preparation among strategies.

METHODS

The study utilized a retrospective cohort design conducted on brain tumor patients who had undergone surgery between January 2014 and December 2021. Overall data were divided into two cohorts. The first cohort was used for the development and deployment of the ML-based web application, while validation, comparison of the effectiveness indexes, and economic evaluation were performed using the second cohort. Therefore, the effectiveness indexes of blood preparation and cost difference were compared among the ML-based strategy, clinical trial-based strategy, and routine-based strategy.

RESULTS

Over a 2-year period, the crossmatch to transfusion (C/T) ratio, transfusion probability (Tp), and transfusion index (Ti) of the ML-based strategy were 1.10, 57.0%, and 1.62, respectively, while the routine-based strategy had a C/T ratio of 4.67%, Tp of 27.9%%, and Ti of 0.79. The overall costs of blood products preparation among the ML-based strategy, clinical trial-based strategy, and routine-based strategy were 30, 061.56$, 57,313.92$, and 136,292.94$, respectively. From the cost difference between the ML-based strategy and routine-based strategy, we observed cost savings of 92,519.97$ (67.88%) for the 2-year period.

CONCLUSION

The ML-based strategy is one of the most effective strategies to balance the unnecessary workloads at blood banks and reduce the cost of unnecessary blood products preparation from low C/T ratio as well as high Tp and Ti. Further studies should be performed to confirm the generalizability and applicability of the ML-based strategy.

摘要

背景

全球范围内,由于疫情的影响,献血活动受到了干扰。因此,优化术前备血策略应该成为关注的重点。机器学习(ML)是医生用来辅助决策的现代方法之一。本研究的主要目的是确定基于 ML 的策略与其他策略相比在术前血液制品准备方面的成本差异。次要目标是比较策略之间血液制品准备的有效性指标。

方法

本研究采用回顾性队列设计,对 2014 年 1 月至 2021 年 12 月期间接受手术的脑肿瘤患者进行研究。总体数据分为两个队列。第一队列用于开发和部署基于 ML 的网络应用程序,而验证、比较有效性指标和经济评估则使用第二队列进行。因此,比较了基于 ML 的策略、临床试验策略和常规策略之间的血液准备有效性指标和成本差异。

结果

在 2 年的时间里,基于 ML 的策略的交叉配血与输血比(C/T)、输血概率(Tp)和输血指数(Ti)分别为 1.10、57.0%和 1.62,而常规策略的 C/T 比为 4.67%、Tp 为 27.9%和 Ti 为 0.79。基于 ML 的策略、临床试验策略和常规策略的血液制品准备总成本分别为 30061.56 美元、57313.92 美元和 136292.94 美元。从基于 ML 的策略与常规策略之间的成本差异来看,我们观察到在 2 年的时间里,成本节省了 92519.97 美元(67.88%)。

结论

基于 ML 的策略是平衡血库不必要工作量和降低成本的最有效策略之一,其方法是通过低 C/T 比、高 Tp 和 Ti 来避免不必要的血液制品准备。应进一步开展研究以确认基于 ML 的策略的可推广性和适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5dbd/9249218/a57751cc19eb/pone.0270916.g001.jpg

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