神经影像学
急诊分诊台
深度学习
冲程(发动机)
急性中风
医学
临床决策
医学影像学
人工智能
计算机科学
重症监护医学
机器学习
医疗急救
急诊科
精神科
工程类
机械工程
作者
Isha R. Chavva,Anna Crawford,Mercy H. Mazurek,Matthew Ming Fai Yuen,Anjali M. Prabhat,Seyedmehdi Payabvash,Gordon Sze,Guido J. Falcone,Charles Matouk,Adam de Havenon,Jennifer A. Kim,Richa Sharma,Steven J. Schiff,Matthew S. Rosen,Jayashree Kalpathy–Cramer,Juan E. Iglesias Gonzalez,W. Taylor Kimberly,Kevin N. Sheth
摘要
Brain imaging is essential to the clinical care of patients with stroke, a leading cause of disability and death worldwide. Whereas advanced neuroimaging techniques offer opportunities for aiding acute stroke management, several factors, including time delays, inter‐clinician variability, and lack of systemic conglomeration of clinical information, hinder their maximal utility. Recent advances in deep machine learning (DL) offer new strategies for harnessing computational medical image analysis to inform decision making in acute stroke. We examine the current state of the field for DL models in stroke triage. First, we provide a brief, clinical practice‐focused primer on DL. Next, we examine real‐world examples of DL applications in pixel‐wise labeling, volumetric lesion segmentation, stroke detection, and prediction of tissue fate postintervention. We evaluate recent deployments of deep neural networks and their ability to automatically select relevant clinical features for acute decision making, reduce inter‐rater variability, and boost reliability in rapid neuroimaging assessments, and integrate neuroimaging with electronic medical record (EMR) data in order to support clinicians in routine and triage stroke management. Ultimately, we aim to provide a framework for critically evaluating existing automated approaches, thus equipping clinicians with the ability to understand and potentially apply DL approaches in order to address challenges in clinical practice. ANN NEUROL 2022;92:574–587
科研通智能强力驱动
Strongly Powered by AbleSci AI