首页> 外文期刊>Nepal Journal of Neuroscience >Brief Review of Machine Learning in Neurosurgery
【24h】

Brief Review of Machine Learning in Neurosurgery

机译:神经外科机器学习简述

获取原文
           

摘要

Learning from experience is inherent to animals and humans and when used in computer models it is termed as Machine learning (ML) which was coined by Arthur Samuel the pioneer of computer gaming and artificial intelligence in 1959. This field grew out during the search for artificial intelligence and initially was developed using neural networks, perceptrons, probabilistic reasoning and generalized linear models of statistics. ML works by either of the two methods, supervised learning or unsupervised learning. Search for “ML in neurosurgery” in Pubmed showed 308 results. There were 298 studies with abstracts, 5 clinical trials, 20 review articles and 168 articles in human studies. Of these around 113 articles were either studies of ML in other parts of the body like liver, stroke, EEG, pathology and Parkinsons disease or not involving ML and hence were excluded. Of the 55 remaining cases the majority were studies done in glioma followed by medical imaging in neurosurgery, radiotherapy, language and learning studies. ML will definitely replace many of the cumbersome physical data collection to infer and formulate ways to treat patients in the future. It can make the process of research accumulation, filter, find correlations between variables and help to make algorithms to manage and predict, that can save, time, money and speedup the recovery of the patient.
机译:从经验中学习是动物和人类固有的知识,当用于计算机模型时,它被称为机器学习(ML),这是计算机游戏和人工智能的先驱Arthur Samuel在1959年提出的。情报,最初是使用神经网络,感知器,概率推理和广义统计线性模型开发的。机器学习通过监督学习或无监督学习两种方法中的任一种来工作。在Pubmed中搜索“ ML in Neurosurgery”,显示308条结果。有298篇涉及摘要的研究,5项临床试验,20篇评论文章和168篇关于人体研究的文章。在这113篇文章中,或者研究了肝脏其他部位(例如肝脏,中风,EEG,病理学和帕金森病)中的ML,或者不涉及ML,因此被排除在外。在其余的55个病例中,大多数是在神经胶质瘤中进行的研究,然后是神经外科,放射疗法,语言和学习研究中的医学成像。 ML肯定会取代许多繁琐的物理数据收集,以推断和制定将来治疗患者的方法。它可以使研究过程得以积累,过滤,查找变量之间的相关性,并有助于使算法得以管理和预测,从而可以节省时间,金钱并加快患者的康复速度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号