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利用二进制分类器算法中的信息数据缩减对创伤性脑损伤严重程度进行分类。

Classification of traumatic brain injury severity using informed data reduction in a series of binary classifier algorithms.

机构信息

Brain Research Laboratories, Department of Psychiatry, New York University School of Medicine, New York, NY 10016 USA.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2012 Nov;20(6):806-22. doi: 10.1109/TNSRE.2012.2206609. Epub 2012 Jul 26.

Abstract

Assessment of medical disorders is often aided by objective diagnostic tests which can lead to early intervention and appropriate treatment. In the case of brain dysfunction caused by head injury, there is an urgent need for quantitative evaluation methods to aid in acute triage of those subjects who have sustained traumatic brain injury (TBI). Current clinical tools to detect mild TBI (mTBI/concussion) are limited to subjective reports of symptoms and short neurocognitive batteries, offering little objective evidence for clinical decisions; or computed tomography (CT) scans, with radiation-risk, that are most often negative in mTBI. This paper describes a novel methodology for the development of algorithms to provide multi-class classification in a substantial population of brain injured subjects, across a broad age range and representative subpopulations. The method is based on age-regressed quantitative features (linear and nonlinear) extracted from brain electrical activity recorded from a limited montage of scalp electrodes. These features are used as input to a unique "informed data reduction" method, maximizing confidence of prospective validation and minimizing over-fitting. A training set for supervised learning was used, including: "normal control," "concussed," and "structural injury/CT positive (CT+)." The classifier function separating CT+ from the other groups demonstrated a sensitivity of 96% and specificity of 78%; the classifier separating "normal controls" from the other groups demonstrated a sensitivity of 81% and specificity of 74%, suggesting high utility of such classifiers in acute clinical settings. The use of a sequence of classifiers where the desired risk can be stratified further supports clinical utility.

摘要

医学疾病的评估通常借助客观的诊断测试,这有助于早期干预和适当的治疗。在头部受伤导致的大脑功能障碍的情况下,迫切需要定量评估方法来帮助对遭受创伤性脑损伤(TBI)的受试者进行急性分诊。目前用于检测轻度 TBI(mTBI/脑震荡)的临床工具仅限于症状的主观报告和短期神经认知测试,为临床决策提供的客观证据很少;或计算机断层扫描(CT),其具有辐射风险,在 mTBI 中通常为阴性。本文描述了一种新的方法学,用于开发算法,以便在广泛的年龄范围和代表性亚人群中为大量脑损伤受试者提供多类分类。该方法基于从头皮电极有限电极记录的脑电活动中提取的年龄回归定量特征(线性和非线性)。这些特征被用作独特的“知情数据缩减”方法的输入,最大限度地提高了前瞻性验证的置信度,最小化了过度拟合。使用监督学习的训练集,包括:“正常对照”、“脑震荡”和“结构性损伤/CT 阳性(CT+)”。将 CT+与其他组分开的分类器函数的灵敏度为 96%,特异性为 78%;将“正常对照”与其他组分开的分类器的灵敏度为 81%,特异性为 74%,这表明此类分类器在急性临床环境中具有很高的实用性。使用一系列分类器,可以进一步分层所需的风险,这进一步支持了临床实用性。

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