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@MOSGA14

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Modular Open-Source Genome Annotator

Marburg
Joined January 2022
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@Heiderlab
Heiderlab
1 year
Bernd Schmeck @iLung_Marburg opens the PermedCOPD Symposium in Marburg! Great location at the cinema in downtown! Looking forward to listening the interesting talks! @Interaktion_UMR @Uni_MR
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@biorxiv_bioinfo
bioRxiv Bioinfo
1 year
gLinDA: global differential abundance analysis ofmicrobiomes https://t.co/DWBZofYXtc #biorxiv_bioinfo
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@aisym4med
AISym4MED - Health Horizon Europe Project
2 years
Are you a #student or a #youngprofessional from the #STEM area? Do you want to know more about #GenerativeAI? @aisym4med has the right course for you! 📢 Ensure your spot by subscribing directly through the dedicated FORM on our website: https://t.co/BZ7ypTryKA ! 🔥
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@MicrobAIome_EU
Microb-AI-ome
2 years
🔬Colorectal cancer is a silent threat, affecting 1 in 35 women and 1 in 23 men in the EU. Microb-AI-ome is on a mission to boost early detection and save lives 🌐Join us in the fight against #CRC and make a difference today! https://t.co/3QbIR9RsJ8 #MicrobAIome @cosybio_UHH
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@Feature_Cloud
FeatureCloud
2 years
🧳Time to pack✈️: We wish all consortium members + VIP guests safe travels to Lisbon 🇵🇹 for our final #GeneralAssembly! We are also counting on constructive criticism & fruitful feedback from our valued scientific advisory board (SAB) members🙂. #AppStoreHealthcare @janbaumbach
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@Feature_Cloud
FeatureCloud
2 years
Meet the #FeatureCloud team: The research group of Prof. Dr. Holzinger @aholzin at @MedUniGraz 🇦🇹 promotes a synergistic approach by integrating #HumanComputerInteraction & knowledge discovery / #DataMining, and is therefore called “Research Unit HCI-KDD”. https://t.co/ZbTvh8Q7Qr
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@Feature_Cloud
FeatureCloud
2 years
🛺Exploring #Lisbon in local style during our last GA meeting: 😎 We took a break from science and hopped on #tuktuks for a guided tour - Exploring the city's hidden gems and historic sites was a perfect way to refresh our minds.💨Everyone loved this fun, self-paid experience😊👏
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@Feature_Cloud
FeatureCloud
2 years
🧬For #FederatedLearning in the #OMICS research community - Try it out: We here present a principal component analysis (#PCA) algorithm, a user-friendly tool to be used in federated population stratification for genome-wide association studies (#GWAS)!🧪 https://t.co/ceIyRITQHr
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@Feature_Cloud
FeatureCloud
2 years
👨‍👩‍👧‍👦In multi-cohort #MachineLearning studies💻, it is critical to discern effects that are reproducible across #cohorts & those that are cohort-specific. This new #federated Multi-Task Learning (#MTL) approach facilitates this differentiation. #DataSHIELD https://t.co/avoLcaNLLX
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@Feature_Cloud
FeatureCloud
2 years
🧬Get ready for our #federated singular value decomposition (#SVD) algorithm, suitable for the #privacy and computational requirements of genome-wide association studies (#GWAS). A corresponding App is available in #FeatureCloud's #AppStoreHealthcare! 🧪 https://t.co/pD6hkYaHPg
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@Feature_Cloud
FeatureCloud
2 years
📊📈Another cornerstone of #FeatureCloud's #AppStoreHealthcare - This work describes the challenges of moving principal component analysis (#PCA), a popular technique for analyzing large datasets containing lots of dimensions, to the #federated domain!💻🚀 https://t.co/DoDcxNUWfH
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@Feature_Cloud
FeatureCloud
2 years
📸✨Capturing the collaborative and cheerful #FeatureCloud spirit at our last General Assembly in beautiful #Lisbon 🇵🇹! Each of us is proud to have been part of this amazing project and team.🤩🤗 #FeatureCloud #AppStoreHealthcare #Horizon2020 @cosybio @SBA_Research @researchinst
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@Feature_Cloud
FeatureCloud
2 years
Roman Martin from @Heiderlab presented the latest status of WP3 and updated everyone about the guideline development, standardization, and certification in #software #systems developed for molecular diagnostics. 🧬🔬 Ensuring precision and safety every step of the way! 🤝
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@Feature_Cloud
FeatureCloud
2 years
Meet the brilliant female minds of the @Feature_Cloud consortium! Breaking barriers, brainstorming and writing the code!💻🧠 Just like #KatherineJohnson and #MarieCurie back in their time! 💥
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@Feature_Cloud
FeatureCloud
2 years
🖥️This paper highlights #FederatedLearning as a 🔐#privacy-aware data mining strategy and investigates the #DataLeakage of 3 popular algorithms for so-called "QR decomposition" (Gram-Schmidt orthonormalization, Householder algorithm, and Givens rotation). https://t.co/UrhqHHwTQN
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@Heiderlab
Heiderlab
2 years
We published a new paper on DNA sequence preprocessing for improved DNA-based data storage in @BioinfoAdv! This work was carried out in the #MOSLA project funded by @HMWK_Hessen @MW5513 @Uni_MR @ProLOEWE
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academic.oup.com
AbstractMotivation. There has been rapid progress in the development of error-correcting and constrained codes for DNA storage systems in recent years. How
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@BioinfoAdv
Bioinformatics Advances
2 years
RepairNatrix - a Snakemake workflow for processing DNA sequencing data for DNA storage by Peter Michael Schwarz, @MW5513, @Heiderlab, Bernd Freisleben https://t.co/NeoKH3DyJF
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@Feature_Cloud
FeatureCloud
2 years
Another #AI app using #federatedcomputation from our #AppStoreHealthcare: Evaluation (Classif.) computes various metrics to evaluate the performance of a #classification model: https://t.co/476lHm5CEP #evaluation #FeatureCloud @unihh @HorizonEU
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@Feature_Cloud
FeatureCloud
2 years
Our #Regression Evaluation #FeautureCloud #AI app Evaluation (Regr.) computes various metrics to evaluate the performance of a regression model: https://t.co/K7dlipgRyu #federatedcomputation @unihh @HorizonEU
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@Feature_Cloud
FeatureCloud
2 years
Evaluation (Survival) is the #FeatureCloud #AI app from our #AppStoreHealthcare that evaluates your training models for survival/time-to-event predictions. https://t.co/PPmpBJnr8m #federatedcomputation #survivalanalysis @TU_Muenchen @HorizonEU
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