Journal Club: Biomedical Data Science W23/24
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Description

In this seminar, we study current research publications in biomedical data science. Master students either present a research article, or their master thesis, or they present about their research internship. Credit points can only be earned for the presentation of research articles.

Students who present on their research internship, please follow the guidelines outlined here:

https://www.mi.fu-berlin.de/en/bioinf/stud/master/forschungspraktikum/index.html

 

Schedule

Date   Topic Presenter Discussion leader

24.10.2023

26.10.2023 8:30 via WebEx

 

Intro

Master thesis presentation

Jahn

Wenzel

 
31.10.2023   Intro to cancer Jahn  
07.11.2023        
14.11.2023   Master thesis presentation Oladimeji  
21.11.2023  

Research Internship presentations:

Methylation Risk Scores for Oral Immunotherapy Treatment Response in Children with Peanut Allergy

Cell-type specific variant function determined from generalised sequence to epigenetic deep learning model

 

Siaw Hui Ngu

 

William Rieger

 
28.11.2023  

Chromosomal copy number heterogeneity predicts survival rates across cancers

Kaushik Herzler, Bhaskaraiah
05.12.2023  

Machine learning for genetics-based classification and treatment response prediction in cancer of unknown primary

Pham Sebastian, Bhaskaraiah
12.12.2023   Spatial transcriptomics inferred from pathology whole-slide images links tumor heterogeneity to survival in breast and lung cancer Nepal Sebastian, Pham
19.12.2023  

Research Internship presentation: Copy Number Variations in CRISPR Screen data

Structuring and writing research papers

Schmitz

 

Sebastian

 
09.01.2024        
16.01.2024   Research Internship presentation: Copy number variations (CNV) in CRISPR Screen data Schmitz  
23.01.2024   Clonal evolution of acute myeloid leukemia revealed by high-throughput single-cell genomics Sebastian Kaushik, Nepal
30.01.2024  

Developmental deconvolution for classification of cancer origin

Clonal evolution of acute myeloid leukemia revealed by high-throughput single-cell genomics

Herzler

 

Sebastian

Kaushik, Nepal

Kaushik, Nepal

06.02.2024   Identifying tumor Cells at the single-cell level using machine learning Bhaskaraiah Pham, Herzler
13.02.2024  

Inferring Copy Number Variations from scRNA-seq data

Enhancing replicability & usability of code in research

Otreba

 

Otto

 

 

References

How to structure and write research papers

Mensh B, Kording K (2017) Ten simple rules for structuring papers. PLoS Comput Biol 13(9): e1005619. https://doi.org/10.1371/journal.pcbi.1005619

Zhang W (2014) Ten Simple Rules for Writing Research Papers. PLoS Comput Biol 10(1): e1003453. https://doi.org/10.1371/journal.pcbi.1003453

Overview

Wysocka, Magdalena, et al. "A systematic review of biologically-informed deep learning models for cancer: fundamental trends for encoding and interpreting oncology data." BMC bioinformatics 24.1 (2023): 1-31.

Image analysis

Hägele, M.et al. Resolving challenges in deep learning-based analyses of histopathological images using explanation methods. Sci Rep 10, 6423 (2020).

Tumor microenvironment

Tran, K.A., Addala, V., Johnston, R.L. et al. Performance of tumour microenvironment deconvolution methods in breast cancer using single-cell simulated bulk mixtures. Nat Commun 14, 5758 (2023). https://doi.org/10.1038/s41467-023-41385-5

Tumor cell identification

Dohmen, J., Baranovskii, A., Ronen, J. et al. Identifying tumor cells at the single-cell level using machine learning. Genome Biol 23, 123 (2022). https://doi.org/10.1186/s13059-022-02683-1

Cancer of unknown primary

Moiso, Enrico, et al. "Developmental deconvolution for classification of cancer origin." Cancer discovery 12.11 (2022): 2566-2585.

Moon, I., LoPiccolo, J., Baca, S.C. et al. Machine learning for genetics-based classification and treatment response prediction in cancer of unknown primary. Nat Med 29, 2057–2067 (2023). https://doi.org/10.1038/s41591-023-02482-6

Intra-tumor heterogeneity

Dentro, Stefan C., et al. "Characterizing genetic intra-tumor heterogeneity across 2,658 human cancer genomes." Cell 184.8 (2021): 2239-2254.

Wu, F., Fan, J., He, Y. et al. Single-cell profiling of tumor heterogeneity and the microenvironment in advanced non-small cell lung cancer. Nat Commun 12, 2540 (2021). https://doi.org/10.1038/s41467-021-22801-0

Morita, K., Wang, F., Jahn, K. et al. Clonal evolution of acute myeloid leukemia revealed by high-throughput single-cell genomics. Nat Commun 11, 5327 (2020). https://doi.org/10.1038/s41467-020-19119-8

Levy-Jurgenson, A., Tekpli, X., Kristensen, V.N. et al. Spatial transcriptomics inferred from pathology whole-slide images links tumor heterogeneity to survival in breast and lung cancer. Sci Rep 10, 18802 (2020). https://doi.org/10.1038/s41598-020-75708-z

van Dijk, E., van den Bosch, T., Lenos, K.J. et al. Chromosomal copy number heterogeneity predicts survival rates across cancers. Nat Commun 12, 3188 (2021). https://doi.org/10.1038/s41467-021-23384-6

Basic Course Info

Course No Course Type Hours
19406611 Seminar 2

Time Span 17.10.2023 - 13.02.2024
Instructors
Katharina Jahn

Study Regulation

0262c_MA120 2019 (ÄO 2021), MA Bioninformatik (Mono), 120 LP

Journal Club: Biomedical Data Science W23/24
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Main Events

Day Time Location Details
Tuesday 16-18 T9/055 Seminarraum 2023-10-17 - 2024-02-13

Journal Club: Biomedical Data Science W23/24
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