Unveiling diagnostic information for type 2 diabetes through interpretable machine learning


Here are the Unveiling diagnostic information for type 2 diabetes through interpretable machine learning journals presenting the latest research across various disciplines. From social sciences to technology, each article is expected to provide valuable insights to our readers.

Unveiling diagnostic information definition, unveiling diagnostico, unveiling diagnostic information for kids, unveiling diagnostic information marketing, unveiling diagnostic information for foreigners, unveiling diagnostic information for patients, unveiling diagnostic medical sonography.

Unveiling diagnostic information for type 2 diabetes through interpretable machine learning

The interpretability of disease prediction models is often crucial for their trustworthiness and usability among medical practitioners. Existing methods in interpretable artificial intelligence improve model transparency but fall short in identifying precise, disease-specific primal information. In this work, an interpretable deep learning-based algorithm called the data space landmark refiner was developed, which not only enhances both global interpretability and local interpretability but also reveals the intrinsic information of the data distribution. Using the proposed method, a type 2 diabetes mellitus diagnostic model with high interpretability was constructed on the basis of the electronic health records from two hospitals. Moreover, effective diagnostic information was directly derived from the model's internal parameters, demonstrating strong alignment with current clinical knowledge. Compared with conventional interpretable machine learning approaches, the proposed method offered more precise and specific interpretability, increasing clinical practitioners' trust in machine learning-supported diagnostic models. © 2024 The Author(s)

Authors : Lv X.; Luo J.; Zhang Y.; Guo H.; Yang M.; Li M.; Chen Q.; Jing R.

Source : Elsevier Inc.

Article Information

Year 2025
Type Article
DOI 10.1016/j.ins.2024.121582
ISSN 00200255
Volume 690

You can download the article here


If You have any problem, contact us here


Support Us:

Download Now Buy me a coffee Request Paper Here