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Acta Neurochir Suppl. 2021;131:235-241. doi: 10.1007/978-3-030-59436-7_45.
2
The Intracerebral Hemorrhage Score: Changing Perspectives on Mortality and Disability.脑出血评分:对死亡率和残疾的不断变化的观点。
World Neurosurg. 2020 Mar;135:e573-e579. doi: 10.1016/j.wneu.2019.12.074. Epub 2019 Dec 21.
3
Feasibility of individualised severe traumatic brain injury management using an automated assessment of optimal cerebral perfusion pressure: the COGiTATE phase II study protocol.采用自动评估最佳脑灌注压方法对个体化严重创伤性脑损伤管理的可行性:COGiTATE 二期研究方案。
BMJ Open. 2019 Sep 20;9(9):e030727. doi: 10.1136/bmjopen-2019-030727.
4
Feasibility of Hidden Markov Models for the Description of Time-Varying Physiologic State After Severe Traumatic Brain Injury.严重创伤性脑损伤后时变生理状态描述的隐马尔可夫模型的可行性。
Crit Care Med. 2019 Nov;47(11):e880-e885. doi: 10.1097/CCM.0000000000003966.
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Machine learning applications to clinical decision support in neurosurgery: an artificial intelligence augmented systematic review.机器学习在神经外科临床决策支持中的应用:人工智能增强的系统评价。
Neurosurg Rev. 2020 Oct;43(5):1235-1253. doi: 10.1007/s10143-019-01163-8. Epub 2019 Aug 17.
6
Detection of Brain Activation in Unresponsive Patients with Acute Brain Injury.急性颅脑损伤无意识患者脑激活的检测。
N Engl J Med. 2019 Jun 27;380(26):2497-2505. doi: 10.1056/NEJMoa1812757.
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神经危重症医学:从基础到临床(主编 Claude Hemphill、Michael James) 神经危重症医学中的大数据整合与应用。

Neurocritical Care: Bench to Bedside (Eds. Claude Hemphill, Michael James) Integrating and Using Big Data in Neurocritical Care.

机构信息

Department of Neurology & Rehabilitation Medicine, University of Cincinnati Medical Center, 231 Albert Sabin Way, Cincinnati, OH, 45267-0517, USA.

Collaborative for Research on Acute Neurological Injuries (CRANI), University of Cincinnati, Cincinnati, OH, USA.

出版信息

Neurotherapeutics. 2020 Apr;17(2):593-605. doi: 10.1007/s13311-020-00846-1.

DOI:10.1007/s13311-020-00846-1
PMID:32152955
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7283405/
Abstract

The critical care environment drives huge volumes of data, and clinicians are tasked with quickly processing this data and responding to it urgently. The neurocritical care environment increasingly involves EEG, multimodal intracranial monitoring, and complex imaging which preclude comprehensive human synthesis, and requires new concepts to integrate data into clinical care. By definition, Big Data is data that cannot be handled using traditional infrastructures and is characterized by the volume, variety, velocity, and variability of the data being produced. Big Data in the neurocritical care unit requires rethinking of data storage infrastructures and the development of tools and analytics to drive advancements in the field. Preprocessing, feature extraction, statistical inference, and analytic tools are required in order to achieve the primary goals of Big Data for clinical use: description, prediction, and prescription. Barriers to its use at bedside include a lack of infrastructure development within the healthcare industry, lack of standardization of data inputs, and ultimately existential and scientific concerns about the outputs that result from the use of tools such as artificial intelligence. However, as implied by the fundamental theorem of biomedical informatics, physicians remain central to the development and utility of Big Data to improve patient care.

摘要

重症监护环境产生大量数据,临床医生的任务是快速处理这些数据并紧急响应。神经重症监护环境越来越多地涉及 EEG、多模态颅内监测和复杂成像,这排除了全面的人工综合,需要新概念将数据整合到临床护理中。根据定义,大数据是指无法使用传统基础设施处理的数据,其特点是所产生数据的数量、种类、速度和可变性。神经重症监护病房中的大数据需要重新考虑数据存储基础设施的开发,以及开发工具和分析方法,以推动该领域的发展。为了实现大数据在临床应用中的主要目标,即描述、预测和规定,需要进行预处理、特征提取、统计推断和分析工具。其在床边使用的障碍包括医疗保健行业内部缺乏基础设施的发展、数据输入缺乏标准化,以及最终对使用人工智能等工具所产生的结果存在存在和科学方面的担忧。然而,正如生物医学信息学的基本定理所暗示的那样,医生仍然是开发和利用大数据来改善患者护理的核心。