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Autores principales: Yuxin, Jia, Jinye, Li, Yudong, Jia, Futing, Li, Xiaoqi, Su, Jilin, Luo, Yarui, Dong, Chunyan, Sun, Qinghan, Cui, Li, Wang, Axiu, Li, Yi, Shang, Yujuan, Zhu, Sanwen, Huang
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2506.00082
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author Yuxin, Jia
Jinye, Li
Yudong, Jia
Futing, Li
Xiaoqi, Su
Jilin, Luo
Yarui, Dong
Chunyan, Sun
Qinghan, Cui
Li, Wang
Axiu, Li
Yi, Shang
Yujuan, Zhu
Sanwen, Huang
author_facet Yuxin, Jia
Jinye, Li
Yudong, Jia
Futing, Li
Xiaoqi, Su
Jilin, Luo
Yarui, Dong
Chunyan, Sun
Qinghan, Cui
Li, Wang
Axiu, Li
Yi, Shang
Yujuan, Zhu
Sanwen, Huang
contents Potato functional genomics lags due to unsystematic gene information curation, gene identifier inconsistencies across reference genome versions, and the increasing volume of research publications. To address these limitations, we developed the Potato Knowledge Hub (http://www.potato-ai.top), leveraging Large Language Models (LLMs) and a systematically curated collection of over 3,200 high-quality potato research papers spanning over 120 years. This platform integrates two key modules: a functional gene database containing 2,571 literature-reported genes, meticulously mapped to the latest DMv8.1 reference genome with resolved nomenclature discrepancies and links to original publications; and a potato knowledge base. The knowledge base, built using a Retrieval-Augmented Generation (RAG) architecture, accurately answers research queries with literature citations, mitigating LLM "hallucination." Users can interact with the hub via a natural language AI agent, "Potato Research Assistant," for querying specialized knowledge, retrieving gene information, and extracting sequences. The continuously updated Potato Knowledge Hub aims to be a comprehensive resource, fostering advancements in potato functional genomics and supporting breeding programs.
format Preprint
id arxiv_https___arxiv_org_abs_2506_00082
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publishDate 2025
record_format arxiv
spellingShingle An AI-powered Knowledge Hub for Potato Functional Genomics
Yuxin, Jia
Jinye, Li
Yudong, Jia
Futing, Li
Xiaoqi, Su
Jilin, Luo
Yarui, Dong
Chunyan, Sun
Qinghan, Cui
Li, Wang
Axiu, Li
Yi, Shang
Yujuan, Zhu
Sanwen, Huang
Genomics
Databases
Potato functional genomics lags due to unsystematic gene information curation, gene identifier inconsistencies across reference genome versions, and the increasing volume of research publications. To address these limitations, we developed the Potato Knowledge Hub (http://www.potato-ai.top), leveraging Large Language Models (LLMs) and a systematically curated collection of over 3,200 high-quality potato research papers spanning over 120 years. This platform integrates two key modules: a functional gene database containing 2,571 literature-reported genes, meticulously mapped to the latest DMv8.1 reference genome with resolved nomenclature discrepancies and links to original publications; and a potato knowledge base. The knowledge base, built using a Retrieval-Augmented Generation (RAG) architecture, accurately answers research queries with literature citations, mitigating LLM "hallucination." Users can interact with the hub via a natural language AI agent, "Potato Research Assistant," for querying specialized knowledge, retrieving gene information, and extracting sequences. The continuously updated Potato Knowledge Hub aims to be a comprehensive resource, fostering advancements in potato functional genomics and supporting breeding programs.
title An AI-powered Knowledge Hub for Potato Functional Genomics
topic Genomics
Databases
url https://arxiv.org/abs/2506.00082