首页> 外文会议>IEEE-EMBS Conference on Biomedical Engineering and Sciences >Fuzzy Data to Crisp Estimates: Helping the Neurosurgeon Making Better Treatment Choices for Stroke Patients
【24h】

Fuzzy Data to Crisp Estimates: Helping the Neurosurgeon Making Better Treatment Choices for Stroke Patients

机译:模糊数据到清脆估算:帮助神经外科诊断为中风患者做出更好的治疗选择

获取原文

摘要

Ischemic stroke of brain manifests itself in the form of loss of blood flow at certain parts of the brain rendering them deprived of oxygen, resulting in a chemical imbalance and death of brain cells in that region. The volume depicted by these cells represents the Infarction volume. This volume defines some of the very sensitive treatment decisions that the neurosurgeon has to make; (a) perform a hemicraniectomy? and (b) Prognosis of this surgery's outcome? Current clinical practice does not provide the surgeons with the answers to the above questions. In this paper, a strategy has been presented that utilizes the Infarction Growth Rate (IGR) as the key element in defining the infarction volume reaching critical levels such that a surgery is inevitable within 48 hours. As a current practice, the stroke lesion growth is most frequently assumed linear, or logarithmic. In this paper, a Machine Learning perspective is presented for mapping the infarction volume using several critical clinical parameters into a possible volumetric prediction in time. The same approach is then used for predicting whether the surgery will be needed soon or not, as well as what might be the likelihood of patient's health in a post-surgery state. In this paper, a machine learning platform is presented which is based on the Adaptive Neuro-Fuzzy Inference System [ANFIS], and has been re-structured such that it can predict IGR and IV with reasonable accuracy, over wide time range. ANFIS hypothesize relationships within the data, and newer learning is able to produce complex characterizations of those relationships. The study was conducted on real stroke-registry database from the local hospital and has shown over 90% accurate prediction.
机译:大脑的缺血性卒中表现为血流损失的形式,在脑中的某些部分的血流使其剥夺氧气,导致该地区的脑细胞的化学不平衡和死亡。这些细胞描绘的体积代表梗塞体积。该体积定义了神经外科的一些非常敏感的治疗决定; (a)进行Hemicraniectomy? (b)这种手术的预后的结果?目前的临床实践没有提供上述问题的答案。本文提出了一种策略,其利用梗死生长速率(IAGr)作为定义临时水平达到临界水平的关键元件,使得在48小时内手术是不可避免的。作为目前的实践,中风病变生长最常被假定的线性,或对数。在本文中,提出了一种机器学习透视,用于使用几个关键临床参数将梗死体积映射到可能的容量上的容积预测。然后使用相同的方法来预测手术是否需要很快或不需要,以及患者在手术后状态中的可能性可能存在的可能性。在本文中,提出了一种基于自适应神经模糊推理系统的机器学习平台[ANFIS],并且已经重新构建,使得它可以在宽的时间范围内具有合理的精度来预测IGR和IV。 ANFIS假设数据内的关系,更新的学习能够产生这些关系的复杂特征。该研究是在来自当地医院的实际中风注册表数据库上进行的,并显示了90%的预测。

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