1.Digital Medicine in Thyroidology: A New Era of Managing Thyroid Disease
Jae Hoon MOON ; Steven R STEINHUBL
Endocrinology and Metabolism 2019;34(2):124-131
Digital medicine has the capacity to affect all aspects of medicine, including disease prediction, prevention, diagnosis, treatment, and post-treatment management. In the field of thyroidology, researchers are also investigating potential applications of digital technology for the thyroid disease. Recent studies using artificial intelligence (AI)/machine learning (ML) have reported reasonable performance for the classification of thyroid nodules based on ultrasonographic (US) images. AI/ML-based methods have also shown good diagnostic accuracy for distinguishing between benign and malignant thyroid lesions based on cytopathologic findings. Assistance from AI/ML methods could overcome the limitations of conventional thyroid US and fine-needle aspiration cytology. A web-based database has been developed for thyroid cancer care. In addition to its role as a nationwide registry of thyroid cancer, it is expected to serve as a clinical platform to facilitate better thyroid cancer care and as a research platform providing comprehensive disease-specific big data. Evidence has been found that biosignal monitoring with wearable devices may predict thyroid dysfunction. This real-world thyroid function monitoring could aid in the management and early detection of thyroid dysfunction. In the thyroidology field, research involving the range of digital medicine technologies and their clinical applications is expected to be even more active in the future.
Artificial Intelligence
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Biopsy, Fine-Needle
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Classification
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Diagnosis
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Hyperthyroidism
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Hypothyroidism
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Learning
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Machine Learning
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Thyroid Diseases
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Thyroid Gland
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Thyroid Neoplasms
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Thyroid Nodule
2.Present and Future of Digital Health in Diabetes and Metabolic Disease
Sang Youl RHEE ; Chiweon KIM ; Dong Wook SHIN ; Steven R. STEINHUBL
Diabetes & Metabolism Journal 2020;44(6):819-827
The use of information and communication technology (ICT) in medical and healthcare services goes beyond everyday life. Expectations of a new medical environment, not previously experienced by ICT, exist in the near future. In particular, chronic metabolic diseases such as diabetes and obesity, have a high prevalence and high social and economic burden. In addition, the continuous evaluation and monitoring of daily life is important for effective treatment and management. Therefore, the wide use of ICTbased digital health systems is required for the treatment and management of these diseases. In this article, we compiled a variety of digital health technologies introduced to date in the field of diabetes and metabolic diseases.