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On the use of FIS inside a Telehealth system for cardiovascular risk monitoring

机译:关于在远程医疗系统内使用FIS进行心血管风险监测

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Cardiovascular diseases are the first cause of death in Italy. This has been worsened by the COVID-19 pandemic we are living in. Indeed, worldwide citizens are invited to stay at home to reduce the spreading of the virus, in the hospitals the priority is given to patients affected by COVID-19, and often patients affected by other diseases prefer to postpone routine check-ups, thus aggravating their health condition. There is a need for continuous monitoring of patients at risk, while contacts should be avoided. Telehealth systems, together with smart objects, are able to create assisted environments where patients are remotely and continuously monitored by the medical staff. In this paper, we present the overall architecture of a telehealth system, where vital parameters related to cardiovascular diseases such as heart rate, respiration rate, blood oxygen saturation, and color of lips are collected through a contact-less smart object. Based on these parameters, the level of cardiovascular risk is predicted through a Fuzzy Inference System (FIS) which provides a highly interpretable model against a lower accuracy [1]. To investigate the extent to which the loss of accuracy can be balanced by the acquired interpretability, in this work, we compare the FIS model with black-box models derived by standard machine learning algorithms. Experiments show that the performance of the FIS model is comparable with those of black-box models. Moreover, the FIS is easy to implement and it is easily explainable, thus it is worth in the medical domain where either patients and medical staff need to understand and trust the prediction made by machines.
机译:心血管疾病是意大利死亡的第一个原因。我们居住的Covid-19大流行恶化了。确实,全球公民被邀请留在家中减少病毒的传播,在医院中,优先考虑受Covid-19影响的患者,经常给予患者受其他疾病影响的患者更愿意推迟常规检查,从而加剧其健康状况。需要持续监测风险的患者,而应避免接触。远程医疗系统以及智能物体,能够创建辅助环境,患者被医务人员远程和不断监测。在本文中,我们展示了远程医疗系统的整体架构,其中通过与不少的智能物体收集了与心率,呼吸速率,血氧饱和度等心血管疾病等心血管疾病相关的重要参数。基于这些参数,通过模糊推理系统(FIS)预测心血管风险水平,该模糊推理系统(FIS)提供了一种以较低的精度来提供高度可解释的模型[1]。为了调查精度损失的程度,通过所获得的可解释性可以平衡,在这项工作中,我们将FIS模型与标准机器学习算法衍生的黑匣子型号进行比较。实验表明,FIS模型的性能与黑匣子型号相当。此外,FIS易于实施,并且很容易解释,因此在医学领域中值得在患者和医务人员需要理解和信任机器预测的情况下。

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