TY - JOUR
T1 - Novel Pixelwise Co-Registered Hematoxylin-Eosin and Multiphoton Microscopy Image Dataset for Human Colon Lesion Diagnosis
AU - Picon, Artzai
AU - Terradillos, Elena
AU - Sánchez-Peralta, Luisa F.
AU - Mattana, Sara
AU - Cicchi, Riccardo
AU - Blover, Benjamin J.
AU - Arbide, Nagore
AU - Velasco, Jacques
AU - Etzezarraga, Mª Carmen
AU - Pavone, Francesco S.
AU - Garrote, Estibaliz
AU - Saratxaga, Cristina L.
PY - 2022
Y1 - 2022
N2 - Colorectal cancer presents one of the most elevated incidences of cancer worldwide. Colonoscopy relies on histopathology analysis of hematoxylin-eosin (H&E) images of the removed tissue. Novel techniques such as multi-photon microscopy (MPM) show promising results for performing real-time optical biopsies. However, clinicians are not used to this imaging modality and correlation between MPM and H&E information is not clear. The objective of this paper is to describe and make publicly available an extensive dataset of fully co-registered H&E and MPM images that allows the research community to analyze the relationship between MPM and H&E histopathological images and the effect of the semantic gap that prevents clinicians from correctly diagnosing MPM images. The dataset provides a fully scanned tissue images at 10x optical resolution (0.5 µm/px) from 50 samples of lesions obtained by colonoscopies and colectomies. Diagnostics capabilities of TPF and H&E images were compared. Additionally, TPF tiles were virtually stained into H&E images by means of a deep-learning model. A panel of 5 expert pathologists evaluated the different modalities into three classes (healthy, adenoma/hyperplastic, and adenocarcinoma). Results showed that the performance of the pathologists over MPM images was 65% of the H&E performance while the virtual staining method achieved 90%. MPM imaging can provide appropriate information for diagnosing colorectal cancer without the need for H&E staining. However, the existing semantic gap among modalities needs to be corrected.
AB - Colorectal cancer presents one of the most elevated incidences of cancer worldwide. Colonoscopy relies on histopathology analysis of hematoxylin-eosin (H&E) images of the removed tissue. Novel techniques such as multi-photon microscopy (MPM) show promising results for performing real-time optical biopsies. However, clinicians are not used to this imaging modality and correlation between MPM and H&E information is not clear. The objective of this paper is to describe and make publicly available an extensive dataset of fully co-registered H&E and MPM images that allows the research community to analyze the relationship between MPM and H&E histopathological images and the effect of the semantic gap that prevents clinicians from correctly diagnosing MPM images. The dataset provides a fully scanned tissue images at 10x optical resolution (0.5 µm/px) from 50 samples of lesions obtained by colonoscopies and colectomies. Diagnostics capabilities of TPF and H&E images were compared. Additionally, TPF tiles were virtually stained into H&E images by means of a deep-learning model. A panel of 5 expert pathologists evaluated the different modalities into three classes (healthy, adenoma/hyperplastic, and adenocarcinoma). Results showed that the performance of the pathologists over MPM images was 65% of the H&E performance while the virtual staining method achieved 90%. MPM imaging can provide appropriate information for diagnosing colorectal cancer without the need for H&E staining. However, the existing semantic gap among modalities needs to be corrected.
KW - Multiphoton Microscopy (MPM)
KW - Dataset
KW - Optical Biopsy
KW - Convolutional Neural Network (CNN)
KW - Colorectal Polyps
KW - Multiphoton Microscopy (MPM)
KW - Dataset
KW - Optical Biopsy
KW - Convolutional Neural Network (CNN)
KW - Colorectal Polyps
U2 - 10.1016/j.jpi.2022.100012
DO - 10.1016/j.jpi.2022.100012
M3 - Article
SN - 2229-5089
VL - 13
SP - 100012
JO - Journal of Pathology Informatics
JF - Journal of Pathology Informatics
ER -