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Main Authors: Zhang, Shanghang, Dai, Gaole, Huang, Tiejun, Chen, Jianxu
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.19778
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author Zhang, Shanghang
Dai, Gaole
Huang, Tiejun
Chen, Jianxu
author_facet Zhang, Shanghang
Dai, Gaole
Huang, Tiejun
Chen, Jianxu
contents Rapid advancements in imaging techniques and analytical methods over the past decade have revolutionized our ability to comprehensively probe the biological world at multiple scales, pinpointing the type, quantity, location, and even temporal dynamics of biomolecules. The surge in data complexity and volume presents significant challenges in translating this wealth of information into knowledge. The recently emerged Multimodal Large Language Models (MLLMs) exhibit strong emergent capacities, such as understanding, analyzing, reasoning, and generalization. With these capabilities, MLLMs hold promise to extract intricate information from biological images and data obtained through various modalities, thereby expediting our biological understanding and aiding in the development of novel computational frameworks. Previously, such capabilities were mostly attributed to humans for interpreting and summarizing meaningful conclusions from comprehensive observations and analysis of biological images. However, the current development of MLLMs shows increasing promise in serving as intelligent assistants or agents for augmenting human researchers in biology research
format Preprint
id arxiv_https___arxiv_org_abs_2407_19778
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multimodal Large Language Models for Bioimage Analysis
Zhang, Shanghang
Dai, Gaole
Huang, Tiejun
Chen, Jianxu
Artificial Intelligence
Rapid advancements in imaging techniques and analytical methods over the past decade have revolutionized our ability to comprehensively probe the biological world at multiple scales, pinpointing the type, quantity, location, and even temporal dynamics of biomolecules. The surge in data complexity and volume presents significant challenges in translating this wealth of information into knowledge. The recently emerged Multimodal Large Language Models (MLLMs) exhibit strong emergent capacities, such as understanding, analyzing, reasoning, and generalization. With these capabilities, MLLMs hold promise to extract intricate information from biological images and data obtained through various modalities, thereby expediting our biological understanding and aiding in the development of novel computational frameworks. Previously, such capabilities were mostly attributed to humans for interpreting and summarizing meaningful conclusions from comprehensive observations and analysis of biological images. However, the current development of MLLMs shows increasing promise in serving as intelligent assistants or agents for augmenting human researchers in biology research
title Multimodal Large Language Models for Bioimage Analysis
topic Artificial Intelligence
url https://arxiv.org/abs/2407.19778