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find Keyword "院外" 4 results
  • 喉癌患者院外健康指导需求情况调查

    目的:了解喉癌患者出院后的护理健康指导需求情况,为开展院外护理随访工作提供依据。方法:采用问卷调查法对52例喉癌患者的基本情况、是否需要院外护理健康指导、随访方式、指导内容等进行调查。结果:所有患者均选择需要院外护理健康指导;随访方式以电话随访最多;备选的9项健康指导内容选择的人次均超过了50%。结论:为了促进术后康复,提高生活质量,喉癌患者需要护理人员提供多元化院外健康指导。

    Release date:2016-09-08 10:02 Export PDF Favorites Scan
  • 泛发性脓疱型银屑病患者院外治疗遵医行为的调查

    摘要:目的: 了解泛发性脓疱型银屑病患者在院外治疗期间的遵医行为情况,为院外治疗提供指导。 方法 :采用问卷调查的方法对50例泛发性脓疱型银屑病患者的院外治疗情况进行调查,并对相关因素进行分析研究。 结果 :50例泛发性脓疱型银屑病患者中, 在院外不能正确地按医嘱进行治疗的情况为:有124人次为不完全遵医,有25人次为完全不遵医。在各因素中,遵医程度差的项目分别是定期门诊复查、自我监测、饮食治疗及药物治疗。 结论 :帮助泛发性脓疱型银屑病患者了解疾病,并提高自觉遵医行为是非常必要的,提高遵医行为不仅可控制疾病,还能提高生活质量和延长生命,同时也是减少并发症以及减轻患者经济负担的关键。

    Release date:2016-09-08 10:12 Export PDF Favorites Scan
  • Application of machine learning to prediction model of nervous system prognosis in out-of-hospital cardiac arrest patients: A systematic review

    ObjectiveTo systematically evaluate the clinical value of machine learning (ML) for predicting the neurological outcome of out-of-hospital cardiac arrest (OHCA), and to develop a prediction model. MethodsWe searched the PubMed, Web of Science, EMbase, CNKI, Wanfang database from January 1, 2011 to November 24, 2021. Studies on ML for predicting neurological outcomes in OHCA pateints were collected. Two researchers independently screened the literature, extracted the data and evaluated the bias of the included literature, evaluated the accuracy of different models and compared the area under the receiver operating characteristic curve (AUC). ResultsA total of 20 studies were included. Eleven of the studies were from open source databases and nine were from retrospective studies. Sixteen studies directly predicted OHCA neurological outcomes, and four predicted OHCA neurological outcomes after target temperature management. A total of seven ML algorithms were used, among which neural network was the ML algorithm with the highest frequency (n=5), followed by support vector machine and random forest (n=4). Three papers used multiple algorithms. The most frequently used input characteristic was age (n=19), followed by heart rate (n=17) and gender (n=13). A total of 4 studies compared the predictive value of ML with other classical statistical models, and the AUC value of ML model was higher than that of classical statistical models. ConclusionExisting evidence suggests that ML can more accurately predict OHCA nervous system outcomes, and the predictive performance of ML is superior to traditional statistical models in certain situations.

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  • Development of intelligent monitoring system based on Internet of Things and wearable technology and exploration of its clinical application mode

    Wearable monitoring, which has the advantages of continuous monitoring for a long time with low physiological and psychological load, represents a future development direction of monitoring technology. Based on wearable physiological monitoring technology, combined with Internet of Things (IoT) and artificial intelligence technology, this paper has developed an intelligent monitoring system, including wearable hardware, ward Internet of Things platform, continuous physiological data analysis algorithm and software. We explored the clinical value of continuous physiological data using this system through a lot of clinical practices. And four value points were given, namely, real-time monitoring, disease assessment, prediction and early warning, and rehabilitation training. Depending on the real clinical environment, we explored the mode of applying wearable technology in general ward monitoring, cardiopulmonary rehabilitation, and integrated monitoring inside and outside the hospital. The research results show that this monitoring system can be effectively used for monitoring of patients in hospital, evaluation and training of patients’ cardiopulmonary function, and management of patients outside hospital.

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