Artificial neural network machine learning prediction of the smoking behavior and health risks perception of Indonesian health professionals.

Desy Nuryunarsih, Okatiranti Okatiranti, Lucky Herawati
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Abstract

Health professionals (HPs) can play an important role in influencing the smoking behavior of their patients and the implementation of smoke-free workplace policies. In some countries physicians and dentists may not have a no-smoking policy in place. Breathing in other people's tobacco smoke (second-hand smokers) increase the risk of smoking related diseases. Environmental Tobacco smoke ETS causes a similar range of diseases to active smoking, including various cancers, heart disease, stroke, and respiratory diseases. Little is known about the smoking-related attitudes and clinical practices of HPs in Indonesia. Evidence suggests that high smoking rates remain among male HPs; however, the risk perceptions and attitudes to smoking among Indonesian HPs have not been investigated using prediction model artificial neural networks. For this reason, we developed and validated an artificial neural network (ANN) to identify HPs with smoking behavior. The study population consisted of 240 HPs, including 108 (45%) physicians, and 132 (55%) dentists, with more female (n=159) than male participants (n=81) for both professions. Participants were randomly divided into two sets, the training (192) and test (48) sets. The input variables included gender, profession (doctor or dentist), knowledge regarding smoking-related diseases and awareness of smoking provided to their patients, smoke-free policy in place at their workplace, and smoking status. ANN was constructed with data from the training and selection sets and validated in the test set. The performance of ANN was simultaneously evaluated by discrimination and calibration. After the training, we completed the process using the test dataset with a multilayer perceptron network, determined by 36 input variables. Our results suggested that our final ANN concurrently had good precision (89%), accuracy (81%), sensitivity (85%), and area under the curve (AUC; 70%). ANN can be used as a promising tool for the prediction of smoking status based on health risk perceptions of HPs in Indonesia.

Abstract Image

人工神经网络机器学习预测印尼卫生专业人员吸烟行为与健康风险认知。
卫生专业人员(HPs)可以在影响患者吸烟行为和无烟工作场所政策的实施方面发挥重要作用。在一些国家,医生和牙医可能没有禁烟政策。吸入他人的烟草烟雾(二手吸烟者)会增加患吸烟相关疾病的风险。环境烟草烟雾排放引起的疾病范围与主动吸烟相似,包括各种癌症、心脏病、中风和呼吸系统疾病。在印度尼西亚,人们对HPs的吸烟相关态度和临床实践知之甚少。有证据表明,男性hp的吸烟率仍然很高;然而,印度尼西亚高收入者对吸烟的风险认知和态度尚未使用预测模型人工神经网络进行调查。因此,我们开发并验证了一个人工神经网络(ANN)来识别hp与吸烟行为。研究人群由240名HPs组成,包括108名(45%)医生和132名(55%)牙医,两种职业的女性参与者(n=159)均多于男性参与者(n=81)。参与者被随机分为两组,训练组(192)和测试组(48)。输入变量包括性别、职业(医生或牙医)、向患者提供的与吸烟有关的疾病知识和吸烟意识、工作场所的无烟政策以及吸烟状况。利用训练集和选择集的数据构建人工神经网络,并在测试集中进行验证。通过判别和标定对人工神经网络的性能进行了同步评价。训练结束后,我们使用多层感知器网络的测试数据集完成了这个过程,该网络由36个输入变量决定。结果表明,最终的人工神经网络同时具有良好的精密度(89%)、准确度(81%)、灵敏度(85%)和曲线下面积(AUC;70%)。人工神经网络可以作为一种很有前途的工具,用于根据印度尼西亚人对健康风险的认识来预测吸烟状况。
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