Early prediction of ventricular peritoneal shunt dependency in aneurysmal subarachnoid haemorrhage patients by recurrent neural network-based machine learning using routine intensive care unit data.

IF 2 3区 医学 Q2 ANESTHESIOLOGY
Nils Schweingruber, Jan Bremer, Anton Wiehe, Marius Marc-Daniel Mader, Christina Mayer, Marcel Seungsu Woo, Stefan Kluge, Jörn Grensemann, Fanny Quandt, Jens Gempt, Marlene Fischer, Götz Thomalla, Christian Gerloff, Jennifer Sauvigny, Patrick Czorlich
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引用次数: 0

Abstract

Aneurysmal subarachnoid haemorrhage (aSAH) can lead to complications such as acute hydrocephalic congestion. Treatment of this acute condition often includes establishing an external ventricular drainage (EVD). However, chronic hydrocephalus develops in some patients, who then require placement of a permanent ventriculoperitoneal (VP) shunt. The aim of this study was to employ recurrent neural network (RNN)-based machine learning techniques to identify patients who require VP shunt placement at an early stage. This retrospective single-centre study included all patients who were diagnosed with aSAH and treated in the intensive care unit (ICU) between November 2010 and May 2020 (n = 602). More than 120 parameters were analysed, including routine neurocritical care data, vital signs and blood gas analyses. Various machine learning techniques, including RNNs and gradient boosting machines, were evaluated for their ability to predict VP shunt dependency. VP-shunt dependency could be predicted using an RNN after just one day of ICU stay, with an AUC-ROC of 0.77 (CI: 0.75-0.79). The accuracy of the prediction improved after four days of observation (Day 4: AUC-ROC 0.81, CI: 0.79-0.84). At that point, the accuracy of the prediction was 76% (CI: 75.98-83.09%), with a sensitivity of 85% (CI: 83-88%) and a specificity of 74% (CI: 71-78%). RNN-based machine learning has the potential to predict VP shunt dependency on Day 4 after ictus in aSAH patients using routine data collected in the ICU. The use of machine learning may allow early identification of patients with specific therapeutic needs and accelerate the execution of required procedures.

Abstract Image

利用常规重症监护室数据,通过基于递归神经网络的机器学习,早期预测动脉瘤性蛛网膜下腔出血患者的腹腔腹膜分流术依赖性。
动脉瘤性蛛网膜下腔出血(aSAH)可导致急性脑积水等并发症。急性脑积水的治疗通常包括建立脑室外引流(EVD)。然而,有些患者会出现慢性脑积水,需要进行永久性脑室腹腔分流术(VP)。本研究的目的是采用基于递归神经网络(RNN)的机器学习技术来识别早期需要进行脑室腹腔分流术的患者。这项回顾性单中心研究纳入了 2010 年 11 月至 2020 年 5 月期间确诊为 ASAH 并在重症监护室(ICU)接受治疗的所有患者(n = 602)。研究分析了120多个参数,包括常规神经重症监护数据、生命体征和血气分析。对包括 RNN 和梯度提升机在内的各种机器学习技术预测 VP 分流依赖性的能力进行了评估。使用 RNN 可以在重症监护室住院一天后预测 VP 分流依赖性,AUC-ROC 为 0.77(CI:0.75-0.79)。观察四天后,预测的准确性有所提高(第四天:AUC-ROC 0.81,CI:0.79-0.84)。此时,预测准确率为 76%(CI:75.98-83.09%),灵敏度为 85%(CI:83-88%),特异度为 74%(CI:71-78%)。基于 RNN 的机器学习有可能利用在重症监护室收集到的常规数据预测 aSAH 患者发病后第 4 天的 VP 分流依赖性。使用机器学习可及早识别有特殊治疗需求的患者,并加快所需程序的执行。
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来源期刊
CiteScore
4.30
自引率
13.60%
发文量
144
审稿时长
6-12 weeks
期刊介绍: The Journal of Clinical Monitoring and Computing is a clinical journal publishing papers related to technology in the fields of anaesthesia, intensive care medicine, emergency medicine, and peri-operative medicine. The journal has links with numerous specialist societies, including editorial board representatives from the European Society for Computing and Technology in Anaesthesia and Intensive Care (ESCTAIC), the Society for Technology in Anesthesia (STA), the Society for Complex Acute Illness (SCAI) and the NAVAt (NAVigating towards your Anaestheisa Targets) group. The journal publishes original papers, narrative and systematic reviews, technological notes, letters to the editor, editorial or commentary papers, and policy statements or guidelines from national or international societies. The journal encourages debate on published papers and technology, including letters commenting on previous publications or technological concerns. The journal occasionally publishes special issues with technological or clinical themes, or reports and abstracts from scientificmeetings. Special issues proposals should be sent to the Editor-in-Chief. Specific details of types of papers, and the clinical and technological content of papers considered within scope can be found in instructions for authors.
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