Magnetic resonance detection data analysis method based on consciousness recovery prediction of patient with consciousness disorder

A technology for disturbance of consciousness and data analysis, applied in the field of medical image processing and application, which can solve the problems of influence, poor spatial resolution of neurophysiology, etc.

Active Publication Date: 2018-07-06
AFFILIATED HUSN HOSPITAL OF FUDAN UNIV
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Problems solved by technology

[0004] Behavioral judgment based on clinical scales is currently the most commonly used evaluation method. Wijdicks et al. conducted a pooled analysis and found that the Glasgow Coma Scale (GCS) can well predict the prognosis of coma patients with mixed etiologies. The area under the receiver operating curve (ROC) was 0.87; Estraneo et al. found that patients with responsive recovery had higher coma recovery scale (Coma Recovery Scale-Revised, CRS-R) scores and low disability rating scale (Disability rating Scale, DRS) score, the presence of median nerve SEP and CRS-R>6 points are effective predictors of responsive recovery

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  • Magnetic resonance detection data analysis method based on consciousness recovery prediction of patient with consciousness disorder
  • Magnetic resonance detection data analysis method based on consciousness recovery prediction of patient with consciousness disorder
  • Magnetic resonance detection data analysis method based on consciousness recovery prediction of patient with consciousness disorder

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Embodiment 1

[0042] Prognosis prediction clinical detection test of embodiment 1 disturbance of consciousness

[0043] 1) Preprocessing the RS-fMRI data,

[0044] The RS-fMRI data includes slice acquisition time correction, head motion correction, alignment to standard space, spatial smoothing, temporal bandpass filtering, removal of white matter, cerebrospinal fluid average signal, and head motion curve from the data;

[0045] In this method, the brain region segmentation map (such as figure 1 Shown in A) Extract the average time series of different brain regions (or regions of interest, Regionof interest / ROI); this time series reflects the regional average blood oxygen level-dependent signal (such as figure 1 shown on B);

[0046] 2) For the data obtained in step 1), use the "weighted sparse representation" algorithm to optimally calculate the representation relationship between any brain region and other brain region signals, and use the L-1 weighted by the correlation coefficient b...

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Abstract

The invention belongs to the field of medical image processing and application, relates to a functional image analysis method for predicting the consciousness recovery of a patient with consciousnessdisorder, and particularly relates to a magnetic resonance detection data analysis method based on the function of the patient with consciousness disorder. The data analysis method based on machine learning comprises the steps that based on resting state functional magnetic resonance data (RS-fMRI), a weighted group sparse algorithm is used to construct a human brain functional connection matrix;from the matrix, a sparse representation feature selection method is used to select functional connection features with high contribution to classification for automatic prediction; and a linear support vector machine is used to construct a prediction model to acquire the final prediction result of consciousness recovery. The method is useful as a reference for predicting whether a long-term unconscious patient with brain damage can recover consciousness.

Description

technical field [0001] The invention belongs to the field of medical image processing and application, and relates to a functional image analysis method for predicting the recovery of consciousness of a person with impaired consciousness, in particular to a data analysis method for magnetic resonance detection based on the function of a person with impaired consciousness. Background technique [0002] The prior art discloses that coma (Coma) is a severe disturbance of consciousness caused by extensive damage to the ascending reticular activating system of the brainstem or neurons in the cerebral cortex under the action of various pathogenic factors. stage. With the increasing number of accidents such as traffic accidents and cardiovascular and cerebrovascular diseases and the rapid development of intensive care medicine, the number of patients with severe brain injury who survived is increasing, resulting in an increasing number of patients with disturbance of consciousness....

Claims

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Application Information

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IPC IPC(8): G16H30/20
Inventor 吴雪海沈定刚张寒汤伟军毛颖周良辅齐增鑫
Owner AFFILIATED HUSN HOSPITAL OF FUDAN UNIV
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