Junyan Lu
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junyanlu.bsky.social
Junyan Lu
@junyanlu.bsky.social
Group leader at University Hospital Heidelberg
Former Postdoc at EMBL
Bioinformatician, Data scientists Computational mass-spectrometry, multi-omics, and precision oncology. He/Him
https://lu-group-ukhd.github.io/
Huge thanks to our collaborators —
Britta Velten (@brittavelten.bsky.social)
, the Klingmüller lab at DKFZ (@klingmuelab.bsky.social), and the Winter team at Thoraxklink Heidelberg
— for their contributions 🙏
We invite you to try out msBayesImpute and welcome any feedback or suggestions! 💬
October 7, 2025 at 8:47 AM
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!
👉 Python version: github.com/Lu-Group-UKH...
👉 R version: github.com/Lu-Group-UKH...
October 7, 2025 at 8:47 AM
Across synthetic, semi-synthetic, and experimental serial dilution datasets, msBayesImpute consistently:
✅ Achieved the lowest imputation error
✅ Improved sample-wise normalization
✅ Delivered the highest accuracy in DE analysis across 9 methods
October 7, 2025 at 8:47 AM
Missing values in proteomics are often not missing at random (MNAR). Existing methods either assume MAR or oversimplify MNAR.
💡 msBayesImpute learns protein-specific dropout curves directly from the data using Bayesian matrix factorization + probabilistic dropout models.
October 7, 2025 at 8:47 AM