"KRiShI": a manually curated knowledgebase on rice sheath blight disease.

Akash Das, Asutosh Mishra, Anurag Kashyap, Mahantesha B N Naika, Pankaj Barah
Author Information
  1. Akash Das: Department of Molecular Biology and Biotechnology, Tezpur University, Assam, 784028, India.
  2. Asutosh Mishra: Department of Molecular Biology and Biotechnology, Tezpur University, Assam, 784028, India.
  3. Anurag Kashyap: Department of Plant Pathology, Assam Agricultural University, Assam, 785013, India.
  4. Mahantesha B N Naika: University of Horticultural Sciences, Karnataka, 587315, India.
  5. Pankaj Barah: Department of Molecular Biology and Biotechnology, Tezpur University, Assam, 784028, India. barah@tezu.ernet.in. ORCID

Abstract

Knowledgebase for rice sheath blight information (KRiShI) is a manually curated user-friendly knowledgebase for rice sheath blight (SB) disease that allows users to efficiently mine, visualize, search, benchmark, download, and update meaningful data and information related to SB using its easy and interactive interface. KRiShI collects and integrates widely scattered and unstructured information from various scientific literatures, stores it under a single window, and makes it available to the community in a user-friendly manner. From basic information, best management practices, host resistance, differentially expressed genes, proteins, metabolites, resistance genes, pathways, and OMICS scale experiments, KRiShI presents these in the form of easy and comprehensive tables, diagrams, and pictures. The "Search" tab allows users to verify if their input rice gene id(s) are Rhizoctonia solani (R. solani) responsive and/or resistant. KRiShI will serve as a valuable resource for easy and quick access to data and information related to rice SB disease for both the researchers and the farmers. To encourage community curation a submission facility is made available. KRiShI can be found at http://www.tezu.ernet.in/krishi .

Keywords

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Grants

  1. BT/PR24757/NER/95/843/2017/

MeSH Term

Oryza
Plant Diseases
Knowledge Bases

Links to CNCB-NGDC Resources

Database Commons: DBC008612 (KRiShI)

Word Cloud

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