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OmniCT: Towards a Unified Slice-Volume LVLM for Comprehensive CT Analysis
by
LU, Peng
, Beng Chin Ooi
, Li, Sijing
, Xia, Yingda
, Qiu, Zhongwei
, Fan, Zhenxuan
, Lin, Tianwei
, Zhuang, Yueting
, Zhang, Wenqiao
, Gao, Mingjian
, Xie, Zhongle
, Liu, Jiang
, Xie, Yihan
, Zhang, Ling
, Li, Zhaocheng
in
Cognition & reasoning
/ Computed tomography
/ Lesions
/ Medical imaging
/ Nodules
/ Semantics
2026
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OmniCT: Towards a Unified Slice-Volume LVLM for Comprehensive CT Analysis
by
LU, Peng
, Beng Chin Ooi
, Li, Sijing
, Xia, Yingda
, Qiu, Zhongwei
, Fan, Zhenxuan
, Lin, Tianwei
, Zhuang, Yueting
, Zhang, Wenqiao
, Gao, Mingjian
, Xie, Zhongle
, Liu, Jiang
, Xie, Yihan
, Zhang, Ling
, Li, Zhaocheng
in
Cognition & reasoning
/ Computed tomography
/ Lesions
/ Medical imaging
/ Nodules
/ Semantics
2026
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Do you wish to request the book?
OmniCT: Towards a Unified Slice-Volume LVLM for Comprehensive CT Analysis
by
LU, Peng
, Beng Chin Ooi
, Li, Sijing
, Xia, Yingda
, Qiu, Zhongwei
, Fan, Zhenxuan
, Lin, Tianwei
, Zhuang, Yueting
, Zhang, Wenqiao
, Gao, Mingjian
, Xie, Zhongle
, Liu, Jiang
, Xie, Yihan
, Zhang, Ling
, Li, Zhaocheng
in
Cognition & reasoning
/ Computed tomography
/ Lesions
/ Medical imaging
/ Nodules
/ Semantics
2026
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OmniCT: Towards a Unified Slice-Volume LVLM for Comprehensive CT Analysis
Paper
OmniCT: Towards a Unified Slice-Volume LVLM for Comprehensive CT Analysis
2026
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Overview
Computed Tomography (CT) is one of the most widely used and diagnostically information-dense imaging modalities, covering critical organs such as the heart, lungs, liver, and colon. Clinical interpretation relies on both slice-driven local features (e.g., sub-centimeter nodules, lesion boundaries) and volume-driven spatial representations (e.g., tumor infiltration, inter-organ anatomical relations). However, existing Large Vision-Language Models (LVLMs) remain fragmented in CT slice versus volumetric understanding: slice-driven LVLMs show strong generalization but lack cross-slice spatial consistency, while volume-driven LVLMs explicitly capture volumetric semantics but suffer from coarse granularity and poor compatibility with slice inputs. The absence of a unified modeling paradigm constitutes a major bottleneck for the clinical translation of medical LVLMs. We present OmniCT, a powerful unified slice-volume LVLM for CT scenarios, which makes three contributions: (i) Spatial Consistency Enhancement (SCE): volumetric slice composition combined with tri-axial positional embedding that introduces volumetric consistency, and an MoE hybrid projection enables efficient slice-volume adaptation; (ii) Organ-level Semantic Enhancement (OSE): segmentation and ROI localization explicitly align anatomical regions, emphasizing lesion- and organ-level semantics; (iii) MedEval-CT: the largest slice-volume CT dataset and hybrid benchmark integrates comprehensive metrics for unified evaluation. OmniCT consistently outperforms existing methods with a substantial margin across diverse clinical tasks and satisfies both micro-level detail sensitivity and macro-level spatial reasoning. More importantly, it establishes a new paradigm for cross-modal medical imaging understanding. Our project is available at https://github.com/ZJU4HealthCare/OmniCT.
Publisher
Cornell University Library, arXiv.org
Subject
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