PhD Student β Computational Multi-Omics for Precision Oncology (m/f/d)
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π PhD Position β Computational Multi-Omics for Precision Oncology
Join my group at Heidelberg University to advance precision medicine in AML through computational multi-omics. More details and application link: karriere.klinikum.uni-heidelberg.de/index.php?ac...
20.02.2026 08:49
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From Fig. 1: Study overview
Fig.3a from the paper:
Pathway connectivity network shown as a bipartite graph. Genes and perturbations are connected if the perturbation led to differential expression of that gene. The total number of DEGs for each treatment is depicted by the size of the central nodes. Colour and thickness of edges represent whether genes are induced or suppressed, and significance of drug effect, respectively.
"Cancer pathway connectivity resolved by drug
perturbation and RNA sequencing" presents a unique RNA-seq after perturbation dataset of B cell cancer samples from 116 patients, (almost) each perturbed with 10 small molecule compounds & control.
www.biorxiv.org/content/10.6...
07.01.2026 09:27
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Huge thanks to our collaborators β
Britta Velten (@brittavelten.bsky.social)
, the KlingmΓΌller lab at DKFZ (@klingmuelab.bsky.social), and the Winter team at Thoraxklink Heidelberg
β for their contributions π
We invite you to try out msBayesImpute and welcome any feedback or suggestions! π¬
07.10.2025 08:47
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msBayesImpute works for both small and large datasets, requires no parameter tuning, and is available in R and Python. A Shiny app will be available soon!
π Python version: github.com/Lu-Group-UKH...
π R version: github.com/Lu-Group-UKH...
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Across synthetic, semi-synthetic, and experimental serial dilution datasets, msBayesImpute consistently:
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Achieved the lowest imputation error
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Improved sample-wise normalization
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Delivered the highest accuracy in DE analysis across 9 methods
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Missing values in proteomics are often not missing at random (MNAR). Existing methods either assume MAR or oversimplify MNAR.
π‘ msBayesImpute learns protein-specific dropout curves directly from the data using Bayesian matrix factorization + probabilistic dropout models.
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π Excited to share our new preprint: msBayesImpute - A Versatile Framework for Addressing Missing Values in Biomedical Mass Spectrometry Proteomics Data
π Improves imputation accuracy, normalization, and differential expression detection
πhttps://www.biorxiv.org/content/10.1101/2025.10.02.679746v1
07.10.2025 08:47
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Postdoc / Bioinformatician β Computational Multi-Omics for Precision Oncology (m/f/d)
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π Postdoc / Bioinformatician in Computational Multi-Omics for Precision Oncology at Heidelberg University Hospital: karriere.klinikum.uni-heidelberg.de/index.php?ac...
A great short-term opportunity for anyone looking for a bridge position between PhD, postdoc, or the next career step.
01.10.2025 13:24
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Application - Helmholtz Information & Data Science Academy
We're seeking a PhD student passionate about ML, biology, and driving impact in healthcare!
You'll be working on multi-omics factorization models for personalized medicine, co-supervised by @junyanlu.bsky.social.
π Project: www.helmholtz.de/assets/hidss...
βοΈ Apply: hidss4health.de/application
05.08.2025 08:08
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