Advancing Content-Based Histopathological Image Retrieval Pre-Processing: A Comparative Analysis of the Effects of Color Normalization Techniques
Metadatos
Mostrar el registro completo del ítemAutor
Tabatabaei, Zahra; Pérez Bueno, Fernando; Colomer, Adrián; Oliver Moll, Javier; Molina Soriano, Rafael; Naranjo, ValeryEditorial
MDPI
Materia
Color Histopathological images Content Based Image Retrieval Whole slide imaging
Fecha
2024-03-01Referencia bibliográfica
Tabatabaei, Z.; Pérez Bueno, F.; Colomer, A.; Moll, J.O.; Molina, R.; Naranjo, V. Advancing Content- Based Histopathological Image Retrieval Pre-Processing: A Comparative Analysis of the Effects of Color Normalization Techniques. Appl. Sci. 2024, 14, 2063. https:// doi.org/10.3390/app14052063
Patrocinador
European Union’s Horizon 2020 research and innovation program under the Marie Skłodowska-Curie grant agreement No. 860627 (CLARIFY Project). CLoud ARtificial Intelligence For pathologY. DOI: 10.3030/860627Resumen
Content-Based Histopathological Image Retrieval (CBHIR) is a search technique based on
the visual content and histopathological features of whole-slide images (WSIs). CBHIR tools assist
pathologists to obtain a faster and more accurate cancer diagnosis. Stain variation between hospitals
hampers the performance of CBHIR tools. This paper explores the effects of color normalization
(CN) in a recently proposed CBHIR approach to tackle this issue. In this paper, three different CN
techniques were used on the CAMELYON17 (CAM17) data set, which is a breast cancer data set.
CAM17 consists of images taken using different staining protocols and scanners in five hospitals. Our
experiments reveal that a proper CN technique, which can transfer the color version into the most
similar median values, has a positive impact on the retrieval performance of the proposed CBHIR
framework. According to the obtained results, using CN as a pre-processing step can improve the
accuracy of the proposed CBHIR framework to 97% (a 14% increase), compared to working with the
original images.