In the project, we carried out substatial work in order to achieve the goals of KATY. In particular, a very big part of the work carried out has been devoted to work towards the achievement of the objective of making use of the existing infrastructures and initiatives in genomic and health data pooling. Indeed, this is a very big objective whose results can go beyond the duration of the KATY project and may foster subsequent research. In this objective, we aim to make use of existing resources, and infrastructures and stay within existing initiatives. We have also paved the way to achieve the objective of demonstrating the potential and benefits of eXplainable AI technologies applied to Europe’s relevant genomic repositories in personalized medicine. In particular, we have developed eXplainable AI technologies, which can be the only ones that can be accepted by clinicians to support their clinical decisions.After defining an overall holistic neural network (KATY NN) that ingests input data for a specific patient with a specific tumor, along with specific drug treatment, and outputs the response. KATY NN is currently under development, we developed inner modules in different technologies and solving the different subproblems.
We have also built the KG and we have described how this should be queried by the overall platform. The KG is nearly fully deployed, and users may interact with it. Moreover, we implemented the overall architecture of the system along with the definition of the GUI. Then, the system and the related KATY NN have been tested with KATY clinical data.