Chair and Department of Humanities and Social Medicine, Medical University of Lublin, 20-093 Lublin, Poland.
BioMolecular Resources Research Infrastructure, Poland.
Nutrients. 2021 Jan 22;13(2):322. doi: 10.3390/nu13020322.
Artificial intelligence (AI) as a branch of computer science, the purpose of which is to imitate thought processes, learning abilities and knowledge management, finds more and more applications in experimental and clinical medicine. In recent decades, there has been an expansion of AI applications in biomedical sciences. The possibilities of artificial intelligence in the field of medical diagnostics, risk prediction and support of therapeutic techniques are growing rapidly. The aim of the article is to analyze the current use of AI in nutrients science research. The literature review was conducted in PubMed. A total of 399 records published between 1987 and 2020 were obtained, of which, after analyzing the titles and abstracts, 261 were rejected. In the next stages, the remaining records were analyzed using the full-text versions and, finally, 55 papers were selected. These papers were divided into three areas: AI in biomedical nutrients research (20 studies), AI in clinical nutrients research (22 studies) and AI in nutritional epidemiology (13 studies). It was found that the artificial neural network (ANN) methodology was dominant in the group of research on food composition study and production of nutrients. However, machine learning (ML) algorithms were widely used in studies on the influence of nutrients on the functioning of the human body in health and disease and in studies on the gut microbiota. Deep learning (DL) algorithms prevailed in a group of research works on clinical nutrients intake. The development of dietary systems using AI technology may lead to the creation of a global network that will be able to both actively support and monitor the personalized supply of nutrients.
人工智能(AI)作为计算机科学的一个分支,旨在模仿思维过程、学习能力和知识管理,在实验和临床医学中得到了越来越多的应用。近几十年来,人工智能在生物医学科学中的应用不断扩大。人工智能在医学诊断、风险预测和治疗技术支持方面的可能性正在迅速增长。本文旨在分析人工智能在营养科学研究中的当前应用。文献综述在 PubMed 中进行。共获得 1987 年至 2020 年期间发表的 399 条记录,其中,在分析标题和摘要后,有 261 条被拒绝。在接下来的阶段,使用全文版本分析其余记录,最后选择了 55 篇论文。这些论文分为三个领域:生物医学营养物研究中的 AI(20 项研究)、临床营养物研究中的 AI(22 项研究)和营养流行病学中的 AI(13 项研究)。研究发现,在食品成分研究和营养物生产方面的研究组中,人工神经网络(ANN)方法占据主导地位。然而,机器学习(ML)算法在营养物对健康和疾病状态下人体功能的影响研究以及肠道微生物组研究中得到了广泛应用。深度学习(DL)算法在临床营养物摄入方面的研究组中占主导地位。使用 AI 技术开发膳食系统可能会导致创建一个能够积极支持和监测个性化营养供应的全球网络。