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迈向智能戒烟应用:一种用于预测吸烟事件的 1D-CNN 模型

Towards a Smart Smoking Cessation App: A 1D-CNN Model Predicting Smoking Events.

机构信息

Department of Computing and Mathematics, Faculty of Science and Engineering, Manchester Metropolitan University, M15 6BH Manchester, United Kingdom.

Department of Psychology, Manchester Metropolitan University, M15 6GX Manchester, United Kingdom.

出版信息

Sensors (Basel). 2020 Feb 17;20(4):1099. doi: 10.3390/s20041099.

Abstract

Nicotine consumption is considered a major health problem, where many of those who wish to quit smoking relapse. The problem is that overtime smoking as behaviour is changing into a habit, in which it is connected to internal (e.g., nicotine level, craving) and external (action, time, location) triggers. Smoking cessation apps have proved their efficiency to support smoking who wish to quit smoking. However, still, these applications suffer from several drawbacks, where they are highly relying on the user to initiate the intervention by submitting the factor the causes the urge to smoke. This research describes the creation of a combined Control Theory and deep learning model that can learn the smoker's daily routine and predict smoking events. The model's structure combines a Control Theory model of smoking with a 1D-CNN classifier to adapt to individual differences between smokers and predict smoking events based on motion and geolocation values collected using a mobile device. Data were collected from 5 participants in the UK, and analysed and tested on 3 different machine learning model (SVM, Decision tree, and 1D-CNN), 1D-CNN has proved it's efficiency over the three methods with average overall accuracy 86.6%. The average MSE of forecasting the nicotine level was (0.04) in the weekdays, and (0.03) in the weekends. The model has proved its ability to predict the smoking event accurately when the participant is well engaged with the app.

摘要

尼古丁的摄入被认为是一个主要的健康问题,许多想戒烟的人都会复吸。问题在于,随着时间的推移,吸烟作为一种行为已经变成了一种习惯,它与内部(例如尼古丁水平、渴望)和外部(行动、时间、地点)因素有关。戒烟应用程序已经证明了它们在支持希望戒烟的吸烟者方面的有效性。然而,这些应用程序仍然存在一些缺点,它们高度依赖用户通过提交引起吸烟欲望的因素来启动干预。本研究描述了一种结合控制理论和深度学习模型的创建,该模型可以学习吸烟者的日常生活规律并预测吸烟事件。该模型的结构结合了吸烟的控制理论模型和 1D-CNN 分类器,以适应吸烟者之间的个体差异,并根据使用移动设备收集的运动和地理位置值预测吸烟事件。数据是从英国的 5 名参与者那里收集的,并在 3 种不同的机器学习模型(SVM、决策树和 1D-CNN)上进行了分析和测试,1D-CNN 在所有方法中的准确率达到了 86.6%,证明了其效率。在工作日,预测尼古丁水平的平均均方误差为(0.04),在周末为(0.03)。当参与者充分参与应用程序时,该模型已经证明了其准确预测吸烟事件的能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b6fa/7070428/6573204fc836/sensors-20-01099-g001.jpg

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