基于癌症饮食知识图谱的抗癌配方推荐

IF 1.8 4区 医学 Q3 HEALTH CARE SCIENCES & SERVICES
Jianchen Tang, Bing Huang, Mingshan Xie
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引用次数: 0

摘要

许多食谱含有各种抗癌作用的成分,可以帮助使用者预防癌症,也可以为癌症患者提供治疗,有效地减缓疾病。现有的食谱知识图推荐系统通过挖掘食谱之间、用户与食谱之间的潜在联系来获得实体特征表示,以提高推荐系统的性能。然而,它忽略了时间对用户口味偏好的影响,无法从用户的饮食记录中捕捉到它们之间的依赖关系,也无法更准确地预测用户未来的食谱。我们使用KGAT获得实体的嵌入表示,考虑到时间对用户的影响,食谱推荐可以看作是一个长期的序列预测,引入LSTM网络来动态调整用户的个人口味偏好。根据用户的饮食记录,我们推断出用户对未来饮食的偏好。结合癌症知识图谱,我们为用户提供有利于疾病预防和康复的饮食建议。为了验证PPKG的有效性和合理性,我们将其与其他三种推荐算法在自创建数据集上进行了比较,大量的实验结果表明,我们的算法性能优于其他算法,这证实了PPKG在处理序列推荐方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anticancer Recipe Recommendation Based on Cancer Dietary Knowledge Graph
Many recipes contain ingredients with various anticancer effects, which can help users to prevent cancer, as well as provide treatment for cancer patients, effectively slowing the disease. Existing recipe knowledge graph recommendation systems obtain entity feature representations by mining latent connections between recipes and between users and recipes to enhance the performance of the recommendation system. However, it ignores the influence of time on user taste preferences, fails to capture the dependency between them from the user’s dietary records, and is unable to more accurately predict the user’s future recipes. We use the KGAT to obtain the embedding representation of entities, considering the influence of time on users, and recipe recommendation can be viewed as a long-term sequence prediction, introducing LSTM networks to dynamically adjust users’ personal taste preferences. Based on the user’s dietary records, we infer the user’s preference for the future diet. Combined with the cancer knowledge graph, we provide the user with diet recommendations that are beneficial to disease prevention and rehabilitation. To verify the effectiveness and rationality of PPKG, we compared it with three other recommendation algorithms on the self-created datasets, and the extensive experimental results demonstrate that our algorithm performance performs other algorithms, which confirmed the effectiveness of PPKG in dealing with sequence recommendation.
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来源期刊
European Journal of Cancer Care
European Journal of Cancer Care 医学-康复医学
CiteScore
4.00
自引率
4.80%
发文量
213
审稿时长
3 months
期刊介绍: The European Journal of Cancer Care aims to encourage comprehensive, multiprofessional cancer care across Europe and internationally. It publishes original research reports, literature reviews, guest editorials, letters to the Editor and special features on current issues affecting the care of cancer patients. The Editor welcomes contributions which result from team working or collaboration between different health and social care providers, service users, patient groups and the voluntary sector in the areas of: - Primary, secondary and tertiary care for cancer patients - Multidisciplinary and service-user involvement in cancer care - Rehabilitation, supportive, palliative and end of life care for cancer patients - Policy, service development and healthcare evaluation in cancer care - Psychosocial interventions for patients and family members - International perspectives on cancer care
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