Show simple item record

Deep Generative Modelling in Systems Medicine: From Transcriptomics Data to Drug Development

dc.contributor.advisorSchultze, Joachim L.
dc.contributor.authorOestreich, Marie
dc.date.accessioned2024-02-02T12:15:11Z
dc.date.available2025-02-15T23:00:23Z
dc.date.issued02.02.2024
dc.identifier.urihttps://hdl.handle.net/20.500.11811/11296
dc.description.abstractArtificial intelligence (AI) has been widely applied across many domains, including the biomedical research field. These AI models mostly include discriminative models such as classifiers and regressors that predict for example diseases, disease progression or susceptibility to drugs based on patient data. Outside of the medical field, however, there has been a recent surge of another type of AI: generative models that allow to create data rather than discriminate it. In this work, I illustrate the opportunities offered by generative models in the context of systems medicine on two application scenarios.
Firstly, I investigate the utility of several types of generative models on the task of generating synthetic transcriptomics data. To unlock the full potential of transcriptomics data, making it widely available to other researchers is essential. However, its highly personal nature requires measures to protect patient privacy. In this work, I investigate generative AI for the generation of private synthetic patient cohorts with the goal to enable sharing of transcriptomics data without privacy-violations. I evaluate the synthetic cohorts generated by models that do or do not protect patient privacy for biological soundness. This includes the data’s utility to train classifiers for real data, as well as the preservation of differential expression and co-expression of genes.
Secondly, I address generative modelling for the property-based de novo design of compounds. I firstly focus on the problem of AI-learnable representations of molecules and particularly consider the requirements of such a representation and investigate how well they preserve chemical information content. Specifically, I research the impact of the model architecture of autoencoders on the embedding quality of encoded molecules. From that, I devise an optimisation strategy that not only enhances embedding quality, but also reduces the resources required for training the autoencoder. In a time where global warming progresses at an alarming speed and where resources are waning, measuring the utility of new inventions needs to include the consideration of its environmental impact. I then consider the task of devising new compounds with generative AI. Here, my focus lies especially on the guided generation based on desired properties. During the model design, I additionally concentrate on devising an architecture that is flexible, allowing easy addition of further properties without retraining the model. I demonstrate the effectiveness of the approach for single-property as well as multi-property conditioning.
en
dc.language.isoeng
dc.rightsIn Copyright
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/
dc.subjectgenerative Modellierung
dc.subjectmaschinelles Lernen
dc.subjectSystemmedizin
dc.subjectKI-basierte Wirkstoffentwicklung
dc.subjectprivate synthetische Patientenkohorten
dc.subjectgenerative modelling
dc.subjectmachine learning
dc.subjectsystems medicine
dc.subjectAI-based drug development
dc.subjectprivate synthetic patient cohorts
dc.subject.ddc570 Biowissenschaften, Biologie
dc.subject.ddc610 Medizin, Gesundheit
dc.subject.ddc500 Naturwissenschaften
dc.subject.ddc004 Informatik
dc.titleDeep Generative Modelling in Systems Medicine: From Transcriptomics Data to Drug Development
dc.typeDissertation oder Habilitation
dc.identifier.doihttps://doi.org/10.48565/bonndoc-215
dc.publisher.nameUniversitäts- und Landesbibliothek Bonn
dc.publisher.locationBonn
dc.rights.accessRightsopenAccess
dc.identifier.urnhttps://nbn-resolving.org/urn:nbn:de:hbz:5-74210
ulbbn.pubtypeErstveröffentlichung
ulbbnediss.affiliation.nameRheinische Friedrich-Wilhelms-Universität Bonn
ulbbnediss.affiliation.locationBonn
ulbbnediss.thesis.levelDissertation
ulbbnediss.dissID7421
ulbbnediss.date.accepted15.12.2023
ulbbnediss.instituteAngegliederte Institute, verbundene wissenschaftliche Einrichtungen : Deutsches Zentrum für Neurodegenerative Erkrankungen (DZNE)
ulbbnediss.fakultaetMathematisch-Naturwissenschaftliche Fakultät
dc.contributor.coRefereeFritz, Mario
ulbbnediss.contributor.orcidhttps://orcid.org/0000-0002-4754-1301
ulbbnediss.date.embargoEndDate15.02.2025


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record

The following license files are associated with this item:

InCopyright