Salvato in:
Dettagli Bibliografici
Autori principali: Tyagi, Aayush Kumar, Mishra, Vaibhav, Tiwari, Ashok, Mehra, Lalita, Das, Prasenjit, Makharia, Govind, AP, Prathosh, Mausam
Natura: Preprint
Pubblicazione: 2024
Soggetti:
Accesso online:https://arxiv.org/abs/2412.01182
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866929610450534400
author Tyagi, Aayush Kumar
Mishra, Vaibhav
Tiwari, Ashok
Mehra, Lalita
Das, Prasenjit
Makharia, Govind
AP, Prathosh
Mausam
author_facet Tyagi, Aayush Kumar
Mishra, Vaibhav
Tiwari, Ashok
Mehra, Lalita
Das, Prasenjit
Makharia, Govind
AP, Prathosh
Mausam
contents Celiac disease is an autoimmune disorder triggered by the consumption of gluten. It causes damage to the villi, the finger-like projections in the small intestine that are responsible for nutrient absorption. Additionally, the crypts, which form the base of the villi, are also affected, impairing the regenerative process. The deterioration in villi length, computed as the villi-to-crypt length ratio, indicates the severity of celiac disease. However, manual measurement of villi-crypt length can be both time-consuming and susceptible to inter-observer variability, leading to inconsistencies in diagnosis. While some methods can perform measurement as a post-hoc process, they are prone to errors in the initial stages. This gap underscores the need for pathologically driven solutions that enhance measurement accuracy and reduce human error in celiac disease assessments. Our proposed method, MeasureNet, is a pathologically driven polyline detection framework incorporating polyline localization and object-driven losses specifically designed for measurement tasks. Furthermore, we leverage segmentation model to provide auxiliary guidance about crypt location when crypt are partially visible. To ensure that model is not overdependent on segmentation mask we enhance model robustness through a mask feature mixup technique. Additionally, we introduce a novel dataset for grading celiac disease, consisting of 750 annotated duodenum biopsy images. MeasureNet achieves an 82.66% classification accuracy for binary classification and 81% accuracy for multi-class grading of celiac disease. Code: https://github.com/dair-iitd/MeasureNet
format Preprint
id arxiv_https___arxiv_org_abs_2412_01182
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MeasureNet: Measurement Based Celiac Disease Identification
Tyagi, Aayush Kumar
Mishra, Vaibhav
Tiwari, Ashok
Mehra, Lalita
Das, Prasenjit
Makharia, Govind
AP, Prathosh
Mausam
Computer Vision and Pattern Recognition
Celiac disease is an autoimmune disorder triggered by the consumption of gluten. It causes damage to the villi, the finger-like projections in the small intestine that are responsible for nutrient absorption. Additionally, the crypts, which form the base of the villi, are also affected, impairing the regenerative process. The deterioration in villi length, computed as the villi-to-crypt length ratio, indicates the severity of celiac disease. However, manual measurement of villi-crypt length can be both time-consuming and susceptible to inter-observer variability, leading to inconsistencies in diagnosis. While some methods can perform measurement as a post-hoc process, they are prone to errors in the initial stages. This gap underscores the need for pathologically driven solutions that enhance measurement accuracy and reduce human error in celiac disease assessments. Our proposed method, MeasureNet, is a pathologically driven polyline detection framework incorporating polyline localization and object-driven losses specifically designed for measurement tasks. Furthermore, we leverage segmentation model to provide auxiliary guidance about crypt location when crypt are partially visible. To ensure that model is not overdependent on segmentation mask we enhance model robustness through a mask feature mixup technique. Additionally, we introduce a novel dataset for grading celiac disease, consisting of 750 annotated duodenum biopsy images. MeasureNet achieves an 82.66% classification accuracy for binary classification and 81% accuracy for multi-class grading of celiac disease. Code: https://github.com/dair-iitd/MeasureNet
title MeasureNet: Measurement Based Celiac Disease Identification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.01182