Proteomics biomarker discovery for individualized prevention of familial pancreatic cancer using statistical learning

dc.contributor.authorHa, Chung Shing Rex
dc.contributor.authorMüller-Nurasyid, Martina
dc.contributor.authorPetrera, Agnese
dc.contributor.authorHauck, Stefanie M.
dc.contributor.authorMarini, Federico
dc.contributor.authorBartsch, Detlef K.
dc.contributor.authorSlater, Emily P.
dc.contributor.authorStrauch, Konstantin
dc.date.accessioned2023-05-26T08:07:56Z
dc.date.available2023-05-26T08:07:56Z
dc.date.issued2023
dc.description.abstractBackground The low five-year survival rate of pancreatic ductal adenocarcinoma (PDAC) and the low diagnostic rate of early-stage PDAC via imaging highlight the need to discover novel biomarkers and improve the current screening procedures for early diagnosis. Familial pancreatic cancer (FPC) describes the cases of PDAC that are present in two or more individuals within a circle of first-degree relatives. Using innovative high-throughput proteomics, we were able to quantify the protein profiles of individuals at risk from FPC families in different potential pre-cancer stages. However, the high-dimensional proteomics data structure challenges the use of traditional statistical analysis tools. Hence, we applied advanced statistical learning methods to enhance the analysis and improve the results’ interpretability. Methods We applied model-based gradient boosting and adaptive lasso to deal with the small, unbalanced study design via simultaneous variable selection and model fitting. In addition, we used stability selection to identify a stable subset of selected biomarkers and, as a result, obtain even more interpretable results. In each step, we compared the performance of the different analytical pipelines and validated our approaches via simulation scenarios. Results In the simulation study, model-based gradient boosting showed a more accurate prediction performance in the small, unbalanced, and high-dimensional datasets than adaptive lasso and could identify more relevant variables. Furthermore, using model-based gradient boosting, we discovered a subset of promising serum biomarkers that may potentially improve the current screening procedure of FPC. Conclusion Advanced statistical learning methods helped us overcome the shortcomings of an unbalanced study design in a valuable clinical dataset. The discovered serum biomarkers provide us with a clear direction for further investigations and more precise clinical hypotheses regarding the development of FPC and optimal strategies for its early detection.en_GB
dc.description.sponsorshipDeutsche Forschungsgemeinschaft (DFG)|491381577|Open-Access-Publikationskosten 2022–2024 Universität Mainz - Universitätsmedizin
dc.identifier.doihttp://doi.org/10.25358/openscience-9126
dc.identifier.urihttps://openscience.ub.uni-mainz.de/handle/20.500.12030/9143
dc.language.isoengde
dc.rightsCC-BY-4.0*
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/*
dc.subject.ddc610 Medizinde_DE
dc.subject.ddc610 Medical sciencesen_GB
dc.titleProteomics biomarker discovery for individualized prevention of familial pancreatic cancer using statistical learningen_GB
dc.typeZeitschriftenaufsatzde
jgu.journal.issue1de
jgu.journal.titlePLOS ONEde
jgu.journal.volume18de
jgu.organisation.departmentFB 04 Medizinde
jgu.organisation.nameJohannes Gutenberg-Universität Mainz
jgu.organisation.number2700
jgu.organisation.placeMainz
jgu.organisation.rorhttps://ror.org/023b0x485
jgu.pages.alternativee0280399de
jgu.publisher.doi10.1371/journal.pone.0280399de
jgu.publisher.issn1932-6203de
jgu.publisher.namePLOSde
jgu.publisher.placeSan Francisco, California, USde
jgu.publisher.urihttps://doi.org/10.1371/journal.pone.0280399de
jgu.publisher.year2023
jgu.rights.accessrightsopenAccess
jgu.subject.ddccode610de
jgu.subject.dfgLebenswissenschaftende
jgu.type.contenttypeScientific articlede
jgu.type.dinitypeArticleen_GB
jgu.type.resourceTextde
jgu.type.versionPublished versionde

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