Assessing and predicting operation variables for doctors employing industry 4.0 in health care industry using an adaptive neuro-fuzzy inference system (ANFIS) approach

Maryam Fatima , N.U.K. Sherwani , Sameen Khan , Mohd Zaheen Khan
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引用次数: 12

Abstract

The chief objective of this study is to employ a predictive software called adaptive neuro-fuzzy inference system (ANFIS) approach which assess stress amongst doctors employing industry 4.0 technology during their surgeries. This study further investigates factors contributing the operation accuracy, sensitivity and specificity amongst doctors. Also, the effective performance of doctors can be optimized through earlier prediction for percentage of incorporating Industry 4.0 technologies. Survey was conducted amongst doctors using industry 4.0 technologies who provided unbiased answers to several queries in the questionnaire. The ANFIS model was employed to predict success rate of surgeries through models build with the aid of several input parameters. The outcomes such as accuracy, sensitivity and specificity were studied while employing Industry 4.0 technology which were considered significant factors influencing the perceived various kinds of surgeries in different domains. Moreover, the results of the ANFIS modelling approach showed that with increase in percentage of industry 4.0 machines in medical equipment, the operations sensitivity and accuracy increased, hence the most critical predictors. While specificity did not have any major impact on the surgeries. Henceforth, doctors can take preventive actions and simultaneously plan their work load with the aid of industry 4.0, providing better health benefits to patients making the healthcare industry much more efficient and stress-free.

应用自适应神经模糊推理系统(ANFIS)方法对医疗保健行业采用工业4.0的医生操作变量进行评估和预测
本研究的主要目的是采用一种称为自适应神经模糊推理系统(ANFIS)的预测软件方法,评估采用工业4.0技术的医生在手术期间的压力。本研究进一步探讨影响医生手术准确性、敏感性和特异性的因素。此外,通过早期预测采用工业4.0技术的百分比,可以优化医生的有效绩效。调查是在使用工业4.0技术的医生中进行的,他们对问卷中的几个问题提供了公正的答案。采用ANFIS模型,借助于多个输入参数建立模型,预测手术成功率。采用工业4.0技术对手术的准确性、敏感性和特异性等结果进行了研究,认为这是影响不同领域各类手术感知的重要因素。此外,ANFIS建模方法的结果表明,随着医疗设备中工业4.0机器百分比的增加,操作灵敏度和准确性也随之提高,因此是最关键的预测因素。而特异性对手术没有任何重大影响。此后,医生可以在工业4.0的帮助下采取预防措施,同时计划他们的工作量,为患者提供更好的健康益处,使医疗保健行业更加高效和无压力。
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CiteScore
18.20
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