Startseite Mathematik Chapter 11 Data-driven AI for information retrieval of biomedical images
Kapitel
Lizenziert
Nicht lizenziert Erfordert eine Authentifizierung

Chapter 11 Data-driven AI for information retrieval of biomedical images

  • Mert Akın İnsel , Hale Gonce Kocken , Inci Albayrak und Selcan Karakuş
Veröffentlichen auch Sie bei De Gruyter Brill

Abstract

The application of image processing tools to biomedical images has gained immense attention from researchers worldwide, as such technology can assist practitioners in various decision-making situations. Furthermore, with the increasing value of data in all sectors, including the biomedical healthcare industry, large datasets of biomedical images have become available to data scientists. As a result, successful data-driven artificial intelligence (AI) models have been developed, utilizing biomedical images as input and providing information about patients’ conditions as output, for various applications. These applications encompass diagnosis and disease detection, including cancer prognosis, monitoring, treatment, anatomy and physiology research, molecular imaging, drug development, and clinical trials, as well as biomedical research. As the knowledge base of AI algorithms continues to expand, the potential for groundbreaking advancements in biomedical imaging and its impact on healthcare will be significantly enhanced. In this regard, this chapter provides a review of the most recent literature, offering examples of AI applications in information retrieval from biomedical images. The algorithms used in each example are explicitly emphasized to facilitate the utilization of the most recent and best-performing AI algorithms. In conclusion, while machine learning (ML)-based AI models will remain valuable in most applications, deep learning (DL)-based AI models are expected to become even more prominent in the future, primarily due to the availability of large datasets of biomedical images. By presenting the importance of AI applications in obtaining information from biomedical images through the current literature, this section aims to shed light on researchers working in this dynamic field.

Abstract

The application of image processing tools to biomedical images has gained immense attention from researchers worldwide, as such technology can assist practitioners in various decision-making situations. Furthermore, with the increasing value of data in all sectors, including the biomedical healthcare industry, large datasets of biomedical images have become available to data scientists. As a result, successful data-driven artificial intelligence (AI) models have been developed, utilizing biomedical images as input and providing information about patients’ conditions as output, for various applications. These applications encompass diagnosis and disease detection, including cancer prognosis, monitoring, treatment, anatomy and physiology research, molecular imaging, drug development, and clinical trials, as well as biomedical research. As the knowledge base of AI algorithms continues to expand, the potential for groundbreaking advancements in biomedical imaging and its impact on healthcare will be significantly enhanced. In this regard, this chapter provides a review of the most recent literature, offering examples of AI applications in information retrieval from biomedical images. The algorithms used in each example are explicitly emphasized to facilitate the utilization of the most recent and best-performing AI algorithms. In conclusion, while machine learning (ML)-based AI models will remain valuable in most applications, deep learning (DL)-based AI models are expected to become even more prominent in the future, primarily due to the availability of large datasets of biomedical images. By presenting the importance of AI applications in obtaining information from biomedical images through the current literature, this section aims to shed light on researchers working in this dynamic field.

Heruntergeladen am 20.10.2025 von https://www.degruyterbrill.com/document/doi/10.1515/9783111327853-011/html
Button zum nach oben scrollen