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Main Authors: Rehman, Abdul, Rasool, Iqra, Imran, Ayisha, Ali, Mohsen, Sultani, Waqas
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.13889
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author Rehman, Abdul
Rasool, Iqra
Imran, Ayisha
Ali, Mohsen
Sultani, Waqas
author_facet Rehman, Abdul
Rasool, Iqra
Imran, Ayisha
Ali, Mohsen
Sultani, Waqas
contents Digital hematopathology requires cell-level analysis across diverse disease categories, including malignant disorders (e.g., leukemia), infectious conditions (e.g., malaria), and non-malignant red blood cell disorders (e.g., sickle cell disease). Whether single-task, vision-language, WSI-optimized, or single-cell hematology models, these approaches share a key limitation, they cannot provide unified, multi-task, multi-modal reasoning across the complexities of digital hematopathology. To overcome these limitations, we propose Uni-Hema, a multi-task, unified model for digital hematopathology integrating detection, classification, segmentation, morphology prediction, and reasoning across multiple diseases. Uni-Hema leverages 46 publicly available datasets, encompassing over 700K images and 21K question-answer pairs, and is built upon Hema-Former, a multimodal module that bridges visual and textual representations at the hierarchy level for the different tasks (detection, classification, segmentation, morphology, mask language modeling and visual question answer) at different granularity. Extensive experiments demonstrate that Uni-Hema achieves comparable or superior performance to train on a single-task and single dataset models, across diverse hematological tasks, while providing interpretable, morphologically relevant insights at the single-cell level. Our framework establishes a new standard for multi-task and multi-modal digital hematopathology. The code will be made publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2511_13889
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Uni-Hema: Unified Model for Digital Hematopathology
Rehman, Abdul
Rasool, Iqra
Imran, Ayisha
Ali, Mohsen
Sultani, Waqas
Computer Vision and Pattern Recognition
Machine Learning
Digital hematopathology requires cell-level analysis across diverse disease categories, including malignant disorders (e.g., leukemia), infectious conditions (e.g., malaria), and non-malignant red blood cell disorders (e.g., sickle cell disease). Whether single-task, vision-language, WSI-optimized, or single-cell hematology models, these approaches share a key limitation, they cannot provide unified, multi-task, multi-modal reasoning across the complexities of digital hematopathology. To overcome these limitations, we propose Uni-Hema, a multi-task, unified model for digital hematopathology integrating detection, classification, segmentation, morphology prediction, and reasoning across multiple diseases. Uni-Hema leverages 46 publicly available datasets, encompassing over 700K images and 21K question-answer pairs, and is built upon Hema-Former, a multimodal module that bridges visual and textual representations at the hierarchy level for the different tasks (detection, classification, segmentation, morphology, mask language modeling and visual question answer) at different granularity. Extensive experiments demonstrate that Uni-Hema achieves comparable or superior performance to train on a single-task and single dataset models, across diverse hematological tasks, while providing interpretable, morphologically relevant insights at the single-cell level. Our framework establishes a new standard for multi-task and multi-modal digital hematopathology. The code will be made publicly available.
title Uni-Hema: Unified Model for Digital Hematopathology
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2511.13889