Dr. Liangyu Yin | Artificial Intelligence | Best Researcher Award
Research Professor at Xinqiao Hospital, Army Medical University, China
Dr. Liangyu Yin is an accomplished academic and researcher specializing in clinical nutrition, epidemiology, and artificial intelligence. He has made significant contributions to understanding cancer nutrition and malnutrition, particularly in oncology patients. His expertise spans the intersection of nutrition, cancer biology, and advanced machine learning methodologies. With numerous publications in prestigious journals such as Journal of Cachexia Sarcopenia Muscle, American Journal of Clinical Nutrition, and Clinical Nutrition, Dr. Yin is recognized as a thought leader in his field. He is currently a Research Professor at the Department of Nephrology, Xinqiao Hospital, Army Medical University, where he continues to advance research on cancer cachexia, nutritional interventions, and artificial intelligence applications. His work is aimed at improving patient outcomes, especially for cancer patients, by utilizing innovative research methods, including AI-driven diagnostics and predictive models for malnutrition and cancer prognosis.
Professional Profile
Education:
Dr. Liangyu Yin’s educational journey is marked by a strong foundation in medicine and nutrition. He earned his Ph.D. in Nutrition and Food Hygiene from Army Medical University in 2022, following a Master of Medicine in Nutrition and Food Hygiene from Chongqing Medical University in 2012. His academic journey began with a Bachelor of Arts degree in English, specializing in Biomedical English, from Chongqing Medical University. This diverse educational background has provided him with a robust understanding of both medical and nutritional sciences, which he applies in his research. His ongoing contributions reflect his dedication to bridging clinical nutrition with the latest advancements in artificial intelligence and cancer epidemiology.
Professional Experience:
Dr. Liangyu Yin’s professional experience spans several prestigious roles in academic research, clinical settings, and health science institutions. He currently serves as a Research Professor in the Department of Nephrology at Xinqiao Hospital, Army Medical University. Previously, he held positions as an Associate Research Professor at both Daping Hospital and Southwest Hospital within the Army Medical University, focusing on cancer epidemiology, nutrition, and artificial intelligence. Dr. Yin began his research career as a Research Assistant at the Institute of Hepatobiliary Surgery, Southwest Hospital, where he worked on cancer biology and non-coding RNA. His long-standing career at Army Medical University has contributed to the development of novel methodologies and interventions in clinical nutrition and cancer treatment. His expertise in epidemiology, nutrition, and AI has shaped the direction of his research in improving patient care outcomes.
Research Interests:
Dr. Liangyu Yin’s primary research interests lie at the intersection of clinical nutrition, cancer epidemiology, and artificial intelligence. His work focuses on understanding the role of malnutrition in cancer progression, with a particular emphasis on cancer cachexia, a complex metabolic syndrome associated with cancer. Dr. Yin is dedicated to developing predictive models and AI-driven solutions to identify and address malnutrition in cancer patients, improving patient outcomes and survival rates. His research also investigates non-coding RNA and its role in cancer biology, with a focus on its potential applications in cancer treatment. Through his interdisciplinary approach, combining machine learning with clinical nutrition, Dr. Yin aims to revolutionize cancer care by improving diagnosis, prognosis, and nutritional interventions in clinical practice.
Research Skills:
Dr. Liangyu Yin possesses a diverse set of research skills, enabling him to conduct cutting-edge investigations in the fields of clinical nutrition, cancer epidemiology, and artificial intelligence. His proficiency in utilizing machine learning models to predict and diagnose malnutrition in cancer patients demonstrates his technical expertise. Additionally, Dr. Yin’s deep understanding of cancer biology, especially cancer cachexia and non-coding RNA, is critical to his work. His research skills also extend to conducting large-scale cohort studies and multicenter analyses, as evidenced by his numerous publications. Moreover, his ability to integrate AI with clinical nutrition research allows him to pioneer innovative solutions in medical diagnostics and patient care, making him a leader in his field.
Awards and Honors:
Dr. Liangyu Yin has received numerous accolades and honors for his contributions to clinical nutrition and cancer research. His work has been consistently recognized in prestigious academic journals, and his research has influenced global medical practices regarding nutrition in cancer care. Dr. Yin’s expertise in combining artificial intelligence with nutrition science has earned him several recognitions for innovation in healthcare. He is a highly regarded researcher within the medical and scientific community, regularly invited to present his findings at international conferences and to collaborate on advanced research projects. His commitment to improving cancer patient outcomes through his interdisciplinary research has made him a prominent figure in his field.
Conclusion:
Liangyu Yin is an outstanding candidate for the Best Researcher Award. His research in clinical nutrition, cancer epidemiology, and the innovative use of artificial intelligence sets him apart as a leader in his field. His work has made significant strides in understanding malnutrition and cancer cachexia, with implications for improving patient care. By expanding the scope of his research and enhancing the real-world application of his findings, he has the potential to make an even greater impact on global health. Therefore, he is highly deserving of this award, and his future contributions will continue to shape the field of clinical nutrition and cancer care.
Publication Top Notes:
- Early prediction of severe acute pancreatitis based on improved machine learning models
- Authors: Li, L., Yin, L., Chong, F., Wang, Y., Xu, H.
- Journal: Journal of Army Medical University
- Year: 2024
- Volume: 46(7)
- Pages: 753–759
- Association of possible sarcopenia with all-cause mortality in patients with solid cancer: A nationwide multicenter cohort study
- Authors: Yin, L., Song, C., Cui, J., Shi, H., Xu, H.
- Journal: Journal of Nutrition, Health and Aging
- Year: 2024
- Volume: 28(1)
- Article ID: 100023
- Citations: 3
- Comment on: “Triceps skinfold-albumin index significantly predicts the prognosis of cancer cachexia: A multicentre cohort study” by Yin et al. – the authors reply
- Authors: Yin, L., Cui, J., Lin, X., Shi, H., Xu, H.
- Journal: Journal of Cachexia, Sarcopenia and Muscle
- Year: 2023
- Volume: 14(6)
- Pages: 2993–2994
- Comparison of the performance of the GLIM criteria, PG-SGA and mPG-SGA in diagnosing malnutrition and predicting survival among lung cancer patients: A multicenter study
- Authors: Huo, Z., Chong, F., Yin, L., Shi, H., Xu, H.
- Journal: Clinical Nutrition
- Year: 2023
- Volume: 42(6)
- Pages: 1048–1058
- Citations: 6
- Ensemble learning system to identify nutritional risk and malnutrition in cancer patients without weight loss information
- Authors: Yin, L., Liu, J., Liu, M., Shi, H., Xu, H.
- Journal: Science China Life Sciences
- Year: 2023
- Volume: 66(5)
- Pages: 1200–1203
- Kruppel-like Factors 3 Regulates Migration and Invasion of Gastric Cancer Cells Through NF-κB Pathway
- Authors: Liang, X., Feng, Z., Yan, R., Lu, H., Zhang, L.
- Journal: Alternative Therapies in Health and Medicine
- Year: 2023
- Volume: 29(2)
- Pages: 64–69
- Citations: 1
- Triceps skinfold–albumin index significantly predicts the prognosis of cancer cachexia: A multicentre cohort study
- Authors: Yin, L., Cui, J., Lin, X., Shi, H., Xu, H.
- Journal: Journal of Cachexia, Sarcopenia and Muscle
- Year: 2023
- Volume: 14(1)
- Pages: 517–533
- Citations: 5