...

Artículo

Deep learning-based object detection algorithms in medical imaging: Systematic review

Resumen

Over the past decade, Deep Learning (DL) techniques have demonstrated remarkable advancements across various domains, driving their widespread adoption. Particularly in medical image analysis, DL received greater attention for tasks like image segmentation, object detection, and classification. This paper provides an overview of DL-based object recognition in medical images, exploring recent methods and emphasizing different imaging techniques and anatomical applications. Utilizing a meticulous quantitative and qualitative analysis following PRISMA guidelines, we examined publications based on citation rates to explore into the utilization of DL-based object detectors across imaging modalities and anatomical domains. Our findings reveal a consistent rise in the utilization of DL-based object detection models, indicating unexploited potential in medical image analysis. Predominantly within Medicine and Computer Science domains, research in this area is most active in the US, China, and Japan. Notably, DL-based object detection methods have gotten significant interest across diverse medical imaging modalities and anatomical domains. These methods have been applied to a range of techniques including CR scans, pathology images, and endoscopic imaging, showcasing their adaptability. Moreover, diverse anatomical applications, particularly in digital pathology and microscopy, have been explored. The analysis underscores the presence of varied datasets, often with significant discrepancies in size, with a notable percentage being labeled as private or internal, and with prospective studies in this field remaining scarce. Our review of existing trends in DL-based object detection in medical images offers insights for future research directions. The continuous evolution of DL algorithms highlighted in the literature underscores the dynamic nature of this field, emphasizing the need for ongoing research and fitted optimization for specific applications.
Albuquerque, Carina (57358549200); Henriques, Roberto (26428783400); Castelli, Mauro (36052209100)
Deep learning-based object detection algorithms in medical imaging: Systematic review
2025
10.1016/j.heliyon.2024.e41137
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85211618807&doi=10.1016%2fj.heliyon.2024.e41137&partnerID=40&md5=d3bc0b25dea670ce72c108d4a8a80619
NOVA Information Management School, Lisboa, Portugal
All Open Access; Gold Open Access
Scopus
Artículo obtenido de:
Scopus
0 0 votos
Califica el artículo
Subscribirse
Notificación de
Seraphinite AcceleratorOptimized by Seraphinite Accelerator
Turns on site high speed to be attractive for people and search engines.