School of Computer Science & Comm. Engineering, Jiangsu University, Zhenjiang, China.
Department of Communication Engineering, Hohai University, Changzhou, China.
Front Public Health. 2021 Sep 20;9:737269. doi: 10.3389/fpubh.2021.737269. eCollection 2021.
Recommender systems offer several advantages to hospital data management units and patients with special needs. These systems are more dependent on the extreme subtle hospital-patient data. Thus, disregarding the confidentiality of patients with special needs is not an option. In recent times, several proposed techniques failed to cryptographically guarantee the data privacy of the patients with special needs in the diet recommender systems (RSs) deployment. In order to tackle this pitfall, this paper incorporates a blockchain privacy system (BPS) into deep learning for a diet recommendation system for patients with special needs. Our proposed technique allows patients to get notifications about recommended treatments and medications based on their personalized data without revealing their confidential information. Additionally, the paper implemented machine and deep learning algorithms such as RNN, Logistic Regression, MLP, etc., on an Internet of Medical Things (IoMT) dataset acquired the internet and hospitals that comprises the data of 50 patients with 13 features of various diseases and 1,000 products. The product section has a set of eight features. The IoMT data features were analyzed with BPS and further encoded prior to the application of deep and machine learning-based frameworks. The performance of the different machine and deep learning methods were carried out and the results verify that the long short-term memory (LSTM) technique is more effective than other schemes regarding prediction accuracy, precision, F1-measures, and recall in a secured blockchain privacy system. Results showed that 97.74% accuracy utilizing the LSTM deep learning model was attained. The precision of 98%, recall, and F1-measure of 99% each for the allowed class was also attained. For the disallowed class, the scores were 89, 73, and 80% for precision, recall, and F1-measure, respectively. The performance of our proposed BPS is subdivided into two categories: the secured communication channel of the recommendation system and an enhanced deep learning approach using health base medical dataset that spontaneously identifies what food a patient with special needs should have based on their disease and certain features including gender, weight, age, etc. The proposed system is outstanding as none of the earlier revised works of literature described a recommender system of this kind.
推荐系统为医院数据管理部门和有特殊需求的患者提供了几个优势。这些系统更依赖于极端微妙的医院-患者数据。因此,不考虑特殊需求患者的保密性是不可行的。最近,在饮食推荐系统(RS)部署中,一些提出的技术未能对特殊需求患者的数据隐私进行加密保证。为了解决这个问题,本文将区块链隐私系统(BPS)纳入到深度学习中,为有特殊需求的患者提供饮食推荐系统。我们的建议技术允许患者根据自己的个性化数据获得关于推荐治疗和药物的通知,而无需透露他们的机密信息。此外,本文在从互联网和医院获取的物联网 (IoMT) 数据集上实现了机器和深度学习算法,如 RNN、Logistic Regression、MLP 等,该数据集包含了 50 名患者的 13 种不同疾病特征和 1000 种产品的数据。产品部分有一组 8 个特征。使用 BPS 对 IoMT 数据特征进行分析,并在应用基于深度和机器学习的框架之前对其进行编码。对不同的机器和深度学习方法进行了性能评估,结果验证了在安全的区块链隐私系统中,长短时记忆(LSTM)技术在预测准确性、精度、F1 度量和召回率方面比其他方案更有效。结果表明,使用 LSTM 深度学习模型实现了 97.74%的准确率。允许类别的精度为 98%,召回率和 F1 度量分别为 99%。对于不允许的类别,精度、召回率和 F1 度量的分数分别为 89%、73%和 80%。我们提出的 BPS 的性能分为两个类别:推荐系统的安全通信渠道和使用健康基础医疗数据集的增强深度学习方法,该方法可以自动识别特殊需求患者应该根据他们的疾病和某些特征(包括性别、体重、年龄等)吃什么食物。与早期文献中的修订作品相比,所提出的系统是杰出的,因为没有一个作品描述过这种类型的推荐系统。