This article has been reviewed according to Science X's and . have highlighted the following attributes while ensuring the content's credibility:

fact-checked

peer-reviewed publication

trusted source

proofread

AI-based chatbot make recommendations for bioimage analysis

AI-based chatbot make recommendations for bioimage analysis
Integration of BioImage.IO Chatbot for enhanced computational bioimaging support. Credit: Nature Methods (2024). DOI: 10.1038/s41592-024-02370-y

Scientists from Universidad Carlos III de Madrid (UC3M), together with a research team from Ericsson and the KTH Royal Institute of Technology in Sweden, have developed an artificial intelligence鈥揵ased software program that can search for information and make recommendations for biomedical image analysis.

This innovation streamlines the work of individuals using large bioimage databases, including life sciences researchers, workflow developers, and biotech and pharmaceutical companies.

The new assistant, called the BioImage.IO Chatbot and introduced in the journal , was developed as a response to the issue of information overload faced by some researchers. "We realized that many scientists have to process large volumes of technical documentation, which can become a tedious and overwhelming task," explains Caterina Fuster Barcel贸, a researcher in the Department of Bioengineering at UC3M and one of the study's authors.

"Our goal was to facilitate access to data information while providing a simple interface that allows scientists to focus their time on bioimage analysis rather than programming," she adds.

The chatbot can enable researchers to perform complex image analysis tasks in a simple and intuitive manner. For example, if a researcher needs to process microscopy images using segmentation models, the chatbot can help select and execute the appropriate .

Credit: Carlos III University of Madrid

The assistant is based on extensive language models and employs a technique called Retrieval-Augmented Generation (RAG), which enables real-time access to databases. "The main advantage is that we do not train the model with specific information; instead, we extract it from up-to-date sources, minimizing errors known as 'hallucinations,' which are common inaccuracies in other AI models like ChatGPT," adds Arrate Mu帽oz Barrutia, professor in the Department of Bioengineering at UC3M and another author of the study.

"This ensures the user receives truthful and contextualized information, which is the most important thing for us."

The BioImage.IO Chatbot has additional advantages, as it is also optimized to work directly with microscopes and other laboratory equipment through an extension system that allows researchers to control these devices using simple commands sent directly from the chatbot interface. "Another benefit of our assistant is that it is ," notes Mu帽oz Barrutia, "allowing other developers to continue creating new modules and improving the tool."

The model was refined by these UC3M researchers in collaboration with Ericsson Inc and with significant contributions from Wanlu Lei, Gabriel Reder and Wei Ouyang at KTH's Departments of Intelligent Systems and Applied 麻豆淫院ics, respectively. Team members recently presented it at the From Images to Knowledge () congress held in Milan, Italy.

Artificial intelligence-based chatbot for bioimage analysis
Screenshot of the BioImage.IO chatbot interface. Credit: Carlos III University of Madrid

The team has successfully integrated the chatbot into cloud-based platforms running on web browsers, enabling real-time database queries for image analysis. According to Fuster-Barcel贸, this extensibility is one of the chatbot's major advantages, as it facilitates integration into different workflows, including third-party websites and other research systems.

As for the next steps, the researchers plan to enhance the chatbot's capabilities with a more versatile AI model, capable of reading scientific articles and assisting in experiment planning. This could pave the way for advanced automation in research settings and, perhaps, greater democratization in access to complex scientific tools, they conclude.

More information: Wanlu Lei et al, BioImage.IO Chatbot: a community-driven AI assistant for integrative computational bioimaging, Nature Methods (2024).

Journal information: Nature Methods

Citation: AI-based chatbot make recommendations for bioimage analysis (2024, December 5) retrieved 15 May 2025 from /news/2024-12-ai-based-chatbot-bioimage-analysis.html
This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no part may be reproduced without the written permission. The content is provided for information purposes only.

Explore further


52 shares

Feedback to editors