idw – Informationsdienst Wissenschaft

Nachrichten, Termine, Experten

Grafik: idw-Logo
Grafik: idw-Logo

idw - Informationsdienst
Wissenschaft

idw-Abo

idw-News App:

AppStore

Google Play Store



Instance:
Share on: 
05/11/2026 13:00

Generative Artificial Intelligence Can Significantly Reduce the Number of Animal Experiments

Dr. Markus Bernards Public Relations und Kommunikation
Goethe-Universität Frankfurt am Main

    Researchers at Goethe University and Philipps University Marburg, in collaboration with the Fraunhofer Institute for Translational Medicine and Pharmacology ITMP, have developed a new artificial intelligence to reduce animal experiments. The AI, called genESOM, was trained to “learn” the structure of small datasets. It uses this learned information to generate new data points. These data points reproduce the properties of experimentally collected data as accurately as if they had been obtained in laboratory experiments. In the future, genESOM could reduce the number of laboratory animals needed for testing new active substances by between 30 and 50 percent.

    FRANKFURT. In early phases of drug development, new active substances are tested in animals –alongside numerous other experimental methods. Researchers face a dilemma: on the one hand, for ethical reasons, they aim to keep the number of animals used in an experiment as low as possible. On the other hand, animal experiments must include enough animals to produce reliable and representative results, for example to determine whether a new drug candidate produces a specific effect.

    Professor Jörn Lötsch, data scientist and clinical pharmacologist at Goethe University, in cooperation with computer scientist Professor Alfred Ultsch from Philipps University Marburg—neither of whom conducts animal experiments himself—has developed a generative artificial intelligence called genESOM. genESOM is based on a network of thousands of artificial neurons that “learns” the internal structure of a dataset. This allows it to expand the volume of experimentally obtained data and simulate a larger number of animals in the experiment than were actually used.

    Integrated Error Monitoring

    To train the AI, the scientists used existing data from a previously published mouse study conducted at Fraunhofer ITMP. The research team achieved two key innovations: first, training the AI to generate new data points based on the study data that integrate into the learned data structure as if they had been obtained in real experiments.

    The second innovation was integrating error monitoring directly into the process of generating new data points. Generative AI methods generally risk amplifying not only the relevant signal but also noise and random variation. This problem is known as error inflation and can lead to variables that are actually insignificant being incorrectly identified as treatment-relevant (so-called false-positive variables).

    By deliberately separating the learning phase from the synthesis phase, it becomes possible to introduce an artificial error signal into the process and precisely measure its propagation. This results in a data-driven stopping criterion that halts data generation before scientific validity is compromised.

    AI Training with Published Study Data

    genESOM passed a practical test using data from a preclinical study on a multiple sclerosis model. In the original study, 26 mice were divided into three treatment groups to investigate the effects of an experimental drug. Lötsch and Ultsch reduced the dataset to 18 animals (six per group) to simulate a smaller experiment. When they analyzed this reduced dataset, all previously detected treatment effects disappeared completely: statistical tests showed no significance, and machine learning methods could not distinguish between the treatment groups. After augmenting the reduced dataset with additional data points using genESOM, all effects of the full experiment reappeared at the original level of significance – without introducing relevant false-positive findings. Alternative AI methods, including complex deep-learning neural networks tested by the researchers, failed in this case.

    Lötsch explains: “We have now tested a number of datasets in a similar way and can say today: with genESOM, the number of animals used in exploratory research can be reduced by 30 to 50 percent while maintaining scientific validity.” However, the data scientist emphasizes that genESOM can only learn from data obtained in real animal experiments. Nor can the number of laboratory animals be reduced arbitrarily: “If too few animals are included in an experiment and the number is then simply supplemented using generative AI, the experiment could quickly become scientifically worthless due to the amplification of random findings.” Nevertheless, Lötsch is convinced: “With genESOM, we can make an important contribution to reducing the number of animal experiments in large areas of preclinical research.”

    The project was funded by the German Research Foundation (DFG) under the title “Generative artificial intelligence-based algorithm to increase the predictivity of preclinical studies while keeping sample sizes small.”


    Contact for scientific information:

    Professor Dr. Dr. Jörn Lötsch
    Data Science | Clinical Pharmacology
    Institute for Clinical Pharmacology
    Goethe University Frankfurt
    Tel. +49 (0)69 6301-4589
    j.loetsch@em.uni-frankfurt.de


    Original publication:

    Jörn Lötsch, Benjamin Mayer, Natasja de Bruin, Alfred Ultsch: Self-organizing neural network-based generative AI with embedded error inflation control enhances effective knowledge extraction from preclinical studies with reduced sample size. Pharmacological Research (2026) https://doi.org/10.1016/j.phrs.2026.108159

    Jörn Lötsch, André Himmelspach, Dario Kringel: Dimensionality-modulated generative AI for safe biomedical dataset augmentation. iScience (2026) https://doi.org/10.1016/j.isci.2025.114321

    Alfred Ultsch, Jörn Lötsch: Augmenting small biomedical datasets using generative AI methods based on self-organizing neural networks Open Access. Briefings in Bioinformatics (2024) https://doi.org/10.1093/bib/bbae640


    Images

    Criteria of this press release:
    Journalists
    Biology, Chemistry, Medicine, Zoology / agricultural and forest sciences
    transregional, national
    Research results, Scientific Publications
    English


     

    Help

    Search / advanced search of the idw archives
    Combination of search terms

    You can combine search terms with and, or and/or not, e.g. Philo not logy.

    Brackets

    You can use brackets to separate combinations from each other, e.g. (Philo not logy) or (Psycho and logy).

    Phrases

    Coherent groups of words will be located as complete phrases if you put them into quotation marks, e.g. “Federal Republic of Germany”.

    Selection criteria

    You can also use the advanced search without entering search terms. It will then follow the criteria you have selected (e.g. country or subject area).

    If you have not selected any criteria in a given category, the entire category will be searched (e.g. all subject areas or all countries).