Kamińska Magdalena, Trofimiuk-Müldner Małgorzata, Sokołowski Grzegorz, Hubalewska-Dydejczyk Alicja
Chair and Department of Endocrinology, Jagiellonian University Medical College, Kraków, Poland.
Endocrine. 2025 Aug 20. doi: 10.1007/s12020-025-04378-6.
In recent years, endocrinology research has increasingly focused on machine learning (ML) applications. ML offers the possibility of utilizing large data sets and extracting imperceptible patterns. It might contribute in optimizing healthcare outcomes and unveiling new understandings of the intricate mechanisms of endocrine disorders. This review covers the basic aspects of ML and highlights specific areas of endocrinology with potential of ML application.
This narrative review with a systematic literature search comprises studies on endocrine conditions with ML methods used in statistical analysis, published between January 2000 and December 2024.
A total of 1130 studies were analyzed. Thyroid-related research was the most prevalent, followed by studies concerning the pituitary, adrenal and parathyroid glands. ML applications included medical imaging analysis, tumor classification, treatment response prediction, complication risk estimation and identification of molecular markers.
ML has the potential to enhance the diagnosis, treatment and understanding of endocrine diseases. However, the use of ML is still limited by issues such as lack of model transparency, data imbalance and difficulties with clinical implementation. To enable safe and effective application of ML in endocrinology, further validation, interdisciplinary collaboration and standardized approaches are essential.
近年来,内分泌学研究越来越关注机器学习(ML)的应用。机器学习提供了利用大数据集并提取不易察觉模式的可能性。它可能有助于优化医疗保健结果,并揭示对内分泌疾病复杂机制的新认识。本综述涵盖了机器学习的基本方面,并强调了机器学习在应用方面具有潜力的内分泌学特定领域。
本叙述性综述通过系统的文献检索,纳入了2000年1月至2024年12月期间发表的使用机器学习方法进行统计分析的内分泌疾病研究。
共分析了1130项研究。甲状腺相关研究最为普遍,其次是关于垂体、肾上腺和甲状旁腺的研究。机器学习的应用包括医学影像分析、肿瘤分类、治疗反应预测、并发症风险评估以及分子标志物的识别。
机器学习有潜力提高对内分泌疾病的诊断、治疗和认识。然而,机器学习的使用仍然受到诸如模型缺乏透明度、数据不平衡以及临床实施困难等问题的限制。为了使机器学习在内分泌学中能够安全有效地应用,进一步的验证、跨学科合作和标准化方法至关重要。