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find Keyword "心电图" 53 results
  • A summary of research progress on intelligent information processing methods for pregnant women's remote monitoring

    The monitoring of pregnant women is very important. It plays an important role in reducing fetal mortality, ensuring the safety of perinatal mother and fetus, preventing premature delivery and pregnancy accidents. At present, regular examination is the mainstream method for pregnant women's monitoring, but the means of examination out of hospital is scarce, and the equipment of hospital monitoring is expensive and the operation is complex. Using intelligent information technology (such as machine learning algorithm) can analyze the physiological signals of pregnant women, so as to realize the early detection and accident warning for mother and fetus, and achieve the purpose of high-quality monitoring out of hospital. However, at present, there are not enough public research reports related to the intelligent processing methods of out-of-hospital monitoring for pregnant women, so this paper takes the out-of-hospital monitoring for pregnant women as the research background, summarizes the public research reports of intelligent processing methods, analyzes the advantages and disadvantages of the existing research methods, points out the possible problems, and expounds the future development trend, which could provide reference for future related researches.

    Release date:2020-12-14 05:08 Export PDF Favorites Scan
  • 心电图筛查在急诊胸痛患者分诊中的运用

    目的研究分诊护士对急诊胸痛患者分诊时实施心电图筛查的价值。 方法回顾性收集2013年1月-5月与2014年1月-5月以急性胸痛为主诉的急诊患者的临床资料并进行分析,其中2013年1月-5月胸痛患者540例为对照组,未实施心电图筛查;2014年1月-5月660例胸痛患者为观察组,对其实施了心电图筛查。比较在分诊时实施心电图筛查对患者危重程度的评估、早期确诊急性冠状动脉综合征(ACS)和意外事件发生率的影响。 结果观察组分诊至抢救室205例,其中需立即抢救者27例;对照组分诊至抢救室193例,其中需立即抢救者21例。分诊至普通诊断区的患者中,观察组和对照组首诊后转入抢救区的患者分别为42例(9.23%)和91例(26.22%),发生意外事件的患者分别为0例(0.00%)和11例(3.17%),最终确诊ACS患者分别为12例(2.64%)和23例(6.63%),观察组均低于对照组,差异有统计学意义(P<0.05)。分诊至抢救区的患者中,观察组和对照组确诊为ACS者分别为89例(43.41%)和62例(32.12%),差异有统计学意义(P<0.05)。同时实施心电图筛查后,急性胸痛患者分诊准确率由90.00%提高到96.52%,差异有统计学意义(P<0.05)。 结论在急诊预检分诊时,护士应用心电图筛查能有效提高急诊胸痛患者的分诊准确率,提高胸痛患者的早期抢救成功率,此方法值得在综合型医院急诊预检分诊区推广运用。

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  • 感染性心内膜炎引起ST段抬高及肌钙蛋白升高一例

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  • Research on arrhythmia classification algorithm based on adaptive multi-feature fusion network

    Deep learning method can be used to automatically analyze electrocardiogram (ECG) data and rapidly implement arrhythmia classification, which provides significant clinical value for the early screening of arrhythmias. How to select arrhythmia features effectively under limited abnormal sample supervision is an urgent issue to address. This paper proposed an arrhythmia classification algorithm based on an adaptive multi-feature fusion network. The algorithm extracted RR interval features from ECG signals, employed one-dimensional convolutional neural network (1D-CNN) to extract time-domain deep features, employed Mel frequency cepstral coefficients (MFCC) and two-dimensional convolutional neural network (2D-CNN) to extract frequency-domain deep features. The features were fused using adaptive weighting strategy for arrhythmia classification. The paper used the arrhythmia database jointly developed by the Massachusetts Institute of Technology and Beth Israel Hospital (MIT-BIH) and evaluated the algorithm under the inter-patient paradigm. Experimental results demonstrated that the proposed algorithm achieved an average precision of 75.2%, an average recall of 70.1% and an average F1-score of 71.3%, demonstrating high classification accuracy and being able to provide algorithmic support for arrhythmia classification in wearable devices.

    Release date:2025-02-21 03:20 Export PDF Favorites Scan
  • A review on intelligent auxiliary diagnosis methods based on electrocardiograms for myocardial infarction

    Myocardial infarction (MI) has the characteristics of high mortality rate, strong suddenness and invisibility. There are problems such as the delayed diagnosis, misdiagnosis and missed diagnosis in clinical practice. Electrocardiogram (ECG) examination is the simplest and fastest way to diagnose MI. The research on MI intelligent auxiliary diagnosis based on ECG is of great significance. On the basis of the pathophysiological mechanism of MI and characteristic changes in ECG, feature point extraction and morphology recognition of ECG, along with intelligent auxiliary diagnosis method of MI based on machine learning and deep learning are all summarized. The models, datasets, the number of ECG, the number of leads, input modes, evaluation methods and effects of different methods are compared. Finally, future research directions and development trends are pointed out, including data enhancement of MI, feature points and dynamic features extraction of ECG, the generalization and clinical interpretability of models, which are expected to provide references for researchers in related fields of MI intelligent auxiliary diagnosis.

    Release date:2023-10-20 04:48 Export PDF Favorites Scan
  • Research and Practice of Graphic-sequenced Memory Method in Electrocardiogram Teaching

    ObjectiveTo explore the actual effect of “graphic-sequenced memory method” in teaching electrocardiogram (ECG). MethodsOne hundred students were randomly divided into a traditional teaching group (n=50) and an innovative teaching group (n=50) in May, 2014. Teachers in the traditional teaching group utilized the traditional teaching outline, and teachers in the innovative teaching group received training in the new teaching method and syllabus. All students took an examination in the final semester by analyzing 20 ECGs from real clinical cases and gave their ECG reports. ResultsThe average ECG reading time was (32.0±4.8) minutes for the traditional teaching group and (18.0±3.6) minutes for the innovative teaching group. The average ECG accuracy results were (43.0±5.2)% for the traditional teaching group and (77.0±9.6)% for the innovative teaching group. ConclusionsECG learning is an important branch of the cardiac discipline, but ECG’s mechanisms are intricate and the learning content scattered. Textbooks tend to make students feel confused due to the restrictions of the length and format of the syllabi, and there are many other limitations. Graphic-sequenced memory method is a useful method which can be fully used in ECG teaching.

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  • Electrocardiogram and Coronary Angiography in the Diagnosis of Coronary Heart Disease: Clinical comparative analysis

    目的:通过冠脉造影探讨心电图对冠心病的诊断价值。方法:对226例可疑冠心病患者进行心电图与冠脉造影进行对比分析。结果:心电图诊断冠心病的灵敏度为 86.49%,特异度为 65.38%,假阳性率为3462%,假阴性率为 13.51%。心电图随着冠状动脉病变支数增加而检出冠心病的阳性率增高。结论:心电图是临床诊断冠心病最快捷、简便、经济而无创的有效方法,但仍存在一定的局限性。

    Release date:2016-09-08 10:04 Export PDF Favorites Scan
  • Analysis of misdiagnosed cases: epilepsy and syncope

    Objective To explore how to differentiate the epilepsy and syncope in order to minimize the misdiagnosis. Methods Retrospectively analyzed the medical record of 6 cases which were misdiagnosed as epilepsy or syncope during April 2008 to September 2012 and reviewed the literatures about the differential diagnosis. Results Among the clinical characteristics, the ictal positional tone and loss of consciousness as well as the duration of postictal confusion are very important to the differential diagnosis. The ictal EEG shows highly rhythmic abnormal discharges when epileptic seizures occur. However, the ictal EEG would become slower and flatler during syncope. Conclusions When the automomic disorder and signs such as chest distress, arrhythmia. appear, the causes should not be limited in the cardiac diseases, the functional or structural abnormalities of the nervous system innervating the heart should also be considered; on the contrary, convulsions might not only due to the abnormal electrical activity in the brain, but syncope.

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  • Application of deep neural network models to the electrocardiogram

    Electrocardiogram (ECG) is a noninvasive, inexpensive, and convenient test for diagnosing cardiovascular diseases and assessing the risk of cardiovascular events. Although there are clear standardized operations and procedures for ECG examination, the interpretation of ECG by even trained physicians can be biased due to differences in diagnostic experience. In recent years, artificial intelligence has become a powerful tool to automatically analyze medical data by building deep neural network models, and has been widely used in the field of medical image diagnosis such as CT, MRI, ultrasound and ECG. This article mainly introduces the application progress of deep neural network models in ECG diagnosis and prediction of cardiovascular diseases, and discusses its limitations and application prospects.

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  • Arrhythmia heartbeats classification based on neighborhood preserving embedding algorithm

    Arrhythmia is a kind of common cardiac electrical activity abnormalities. Heartbeats classification based on electrocardiogram (ECG) is of great significance for clinical diagnosis of arrhythmia. This paper proposes a feature extraction method based on manifold learning, neighborhood preserving embedding (NPE) algorithm, to achieve the automatic classification of arrhythmia heartbeats. With classification system, we obtained low dimensional manifold structure features of high dimensional ECG signals by NPE algorithm, then we inputted the feature vectors into support vector machine (SVM) classifier for heartbeats diagnosis. Based on MIT-BIH arrhythmia database, we clustered 14 classes of arrhythmia heartbeats in the experiment, which yielded a high overall classification accuracy of 98.51%. Experimental result showed that the proposed method was an effective classification method for arrhythmia heartbeats.

    Release date:2017-04-01 08:56 Export PDF Favorites Scan
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