TY - JOUR
T1 - Constrained multiple instance learning for ulcerative colitis prediction using histological images
AU - del Amor, Rocío
AU - Meseguer, Pablo
AU - Parigi, Tommaso Lorenzo
AU - Villanacci, Vincenzo
AU - Colomer, Adrián
AU - Launet, Laëtitia
AU - Bazarova, Alina
AU - Tontini, Gian Eugenio
AU - Bisschops, Raf
AU - de Hertogh, Gert
AU - Ferraz, Jose G.
AU - Götz, Martin
AU - Gui, Xianyong
AU - Hayee, Bu'Hussain H.
AU - Lazarev, Mark
AU - Panaccione, Remo
AU - Parra-Blanco, Adolfo
AU - Bhandari, Pradeep
AU - Pastorelli, Luca
AU - Rath, Timo
AU - Røyset, Elin Synnøve
AU - Vieth, Michael
AU - Zardo, Davide
AU - Grisan, Enrico
AU - Ghosh, Subrata
AU - Iacucci, Marietta
AU - Naranjo, Valery
N1 - Publisher Copyright:
© 2022
PY - 2022/9
Y1 - 2022/9
N2 - Background and Objective: Ulcerative colitis (UC) is an inflammatory bowel disease (IBD) affecting the colon and the rectum characterized by a remitting-relapsing course. To detect mucosal inflammation associated with UC, histology is considered the most stringent criteria. In turn, histologic remission (HR) correlates with improved clinical outcomes and has been recently recognized as a desirable treatment target. The leading biomarker for assessing histologic remission is the presence or absence of neutrophils. Therefore, the finding of this cell in specific colon structures indicates that the patient has UC activity. However, no previous studies based on deep learning have been developed to identify UC based on neutrophils detection using whole-slide images (WSI). Methods: The methodological core of this work is a novel multiple instance learning (MIL) framework with location constraints able to determine the presence of UC activity using WSI. In particular, we put forward an effective way to introduce constraints about positive instances to effectively explore additional weakly supervised information that is easy to obtain and enjoy a significant boost to the learning process. In addition, we propose a new weighted embedding to enlarge the relevance of the positive instances. Results: Extensive experiments on a multi-center dataset of colon and rectum WSIs, PICASSO-MIL, demonstrate that using the location information we can improve considerably the results at WSI-level. In comparison with prior MIL settings, our method allows for 10% improvements in bag-level accuracy. Conclusion: Our model, which introduces a new form of constraints, surpass the results achieved from current state-of-the-art methods that focus on the MIL paradigm. Our method can be applied to other histological concerns where the morphological features determining a positive WSI are tiny and similar to others in the image.
AB - Background and Objective: Ulcerative colitis (UC) is an inflammatory bowel disease (IBD) affecting the colon and the rectum characterized by a remitting-relapsing course. To detect mucosal inflammation associated with UC, histology is considered the most stringent criteria. In turn, histologic remission (HR) correlates with improved clinical outcomes and has been recently recognized as a desirable treatment target. The leading biomarker for assessing histologic remission is the presence or absence of neutrophils. Therefore, the finding of this cell in specific colon structures indicates that the patient has UC activity. However, no previous studies based on deep learning have been developed to identify UC based on neutrophils detection using whole-slide images (WSI). Methods: The methodological core of this work is a novel multiple instance learning (MIL) framework with location constraints able to determine the presence of UC activity using WSI. In particular, we put forward an effective way to introduce constraints about positive instances to effectively explore additional weakly supervised information that is easy to obtain and enjoy a significant boost to the learning process. In addition, we propose a new weighted embedding to enlarge the relevance of the positive instances. Results: Extensive experiments on a multi-center dataset of colon and rectum WSIs, PICASSO-MIL, demonstrate that using the location information we can improve considerably the results at WSI-level. In comparison with prior MIL settings, our method allows for 10% improvements in bag-level accuracy. Conclusion: Our model, which introduces a new form of constraints, surpass the results achieved from current state-of-the-art methods that focus on the MIL paradigm. Our method can be applied to other histological concerns where the morphological features determining a positive WSI are tiny and similar to others in the image.
KW - Attention-embedding weights
KW - Histologic remission
KW - Location constraints
KW - Neutrophils
KW - Ulcerative colitis
UR - https://www.scopus.com/pages/publications/85134288655
U2 - 10.1016/j.cmpb.2022.107012
DO - 10.1016/j.cmpb.2022.107012
M3 - Article
C2 - 35843078
AN - SCOPUS:85134288655
SN - 0169-2607
VL - 224
JO - Computer Methods and Programs in Biomedicine
JF - Computer Methods and Programs in Biomedicine
M1 - 107012
ER -