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Dive into the research topics where Martin Hjelmare is active.

Publication


Featured researches published by Martin Hjelmare.


Journal of Proteome Research | 2011

Mapping the subcellular protein distribution in three human cell lines.

Linn Fagerberg; Charlotte Stadler; Marie Skogs; Martin Hjelmare; Kalle Jonasson; Mikaela Wiking; Annica Åbergh; Mathias Uhlén; Emma Lundberg

The subcellular locations of proteins are closely related to their function and constitute an essential aspect for understanding the complex machinery of living cells. A systematic effort has been initiated to map the protein distribution in three functionally different cell lines with the aim to provide a subcellular localization index for at least one representative protein from all human protein-encoding genes. Here, we present the results of more than 3500 proteins mapped to 16 subcellular compartments. The results indicate a ubiquitous protein expression with a majority of the proteins found in all three cell lines and a large portion localized to two or more compartments. The inter-relationships between the subcellular compartments are visualized in a protein-compartment network based on all detected proteins. Hierarchical clustering was performed to determine how closely related the organelles are in terms of protein constituents and compare the proteins detected in each cell type. Our results show distinct organelle proteomes, well conserved across the cell types, and demonstrate that biochemically similar organelles are grouped together.


Journal of Proteomics | 2012

Systematic validation of antibody binding and protein subcellular localization using siRNA and confocal microscopy

Charlotte Stadler; Martin Hjelmare; Beate Neumann; Kalle Jonasson; Rainer Pepperkok; Mathias Uhlén; Emma Lundberg

We have developed a platform for validation of antibody binding and protein subcellular localization data obtained from immunofluorescence using siRNA technology combined with automated confocal microscopy and image analysis. By combining the siRNA technology with automated sample preparation, automated imaging and quantitative image analysis, a high-throughput assay has been set-up to enable confirmation of accurate protein binding and localization in a systematic manner. Here, we describe the analysis and validation of the subcellular location of 65 human proteins, targeted by 75 antibodies and silenced by 130 siRNAs. A large fraction of (80%) the subcellular locations, including locations of several previously uncharacterized proteins, could be confirmed by the significant down-regulation of the antibody signal after the siRNA silencing. A quantitative analysis was set-up using automated image analysis to facilitate studies of targets found in more than one compartment. The results obtained using the platform demonstrate that siRNA silencing in combination with quantitative image analysis of antibody signals in different compartments of the cells is an attractive approach for ensuring accurate protein localization as well as antibody binding using immunofluorescence. With a large fraction of the human proteome still unexplored, we suggest this approach to be of great importance under the continued work of mapping the human proteome on a subcellular level.


Journal of Proteome Research | 2013

RNA Deep Sequencing as a Tool for Selection of Cell Lines for Systematic Subcellular Localization of All Human Proteins

Frida Danielsson; Mikaela Wiking; Diana Mahdessian; Marie Skogs; Hammou Ait Blal; Martin Hjelmare; Charlotte Stadler; Mathias Uhlén; Emma Lundberg

One of the major challenges of a chromosome-centric proteome project is to explore in a systematic manner the potential proteins identified from the chromosomal genome sequence, but not yet characterized on a protein level. Here, we describe the use of RNA deep sequencing to screen human cell lines for RNA profiles and to use this information to select cell lines suitable for characterization of the corresponding gene product. In this manner, the subcellular localization of proteins can be analyzed systematically using antibody-based confocal microscopy. We demonstrate the usefulness of selecting cell lines with high expression levels of RNA transcripts to increase the likelihood of high quality immunofluorescence staining and subsequent successful subcellular localization of the corresponding protein. The results show a path to combine transcriptomics with affinity proteomics to characterize the proteins in a gene- or chromosome-centric manner.


Journal of Proteome Research | 2017

Antibody Validation in Bioimaging Applications Based on Endogenous Expression of Tagged Proteins

Marie Skogs; Charlotte Stadler; Rutger Schutten; Martin Hjelmare; Christian Gnann; Lars Björk; Ina Poser; Anthony A. Hyman; Mathias Uhlén; Emma Lundberg

Antibodies are indispensible research tools, yet the scientific community has not adopted standardized procedures to validate their specificity. Here we present a strategy to systematically validate antibodies for immunofluorescence (IF) applications using gene tagging. We have assessed the on- and off-target binding capabilities of 197 antibodies using 108 cell lines expressing EGFP-tagged target proteins at endogenous levels. Furthermore, we assessed batch-to-batch effects for 35 target proteins, showing that both the on- and off-target binding patterns vary significantly between antibody batches and that the proposed strategy serves as a reliable procedure for ensuring reproducibility upon production of new antibody batches. In summary, we present a systematic scheme for antibody validation in IF applications using endogenous expression of tagged proteins. This is an important step toward a reproducible approach for context- and application-specific antibody validation and improved reliability of antibody-based experiments and research data.


Nature Biotechnology | 2018

Deep learning is combined with massive-scale citizen science to improve large-scale image classification

Devin P. Sullivan; Casper Winsnes; Lovisa Åkesson; Martin Hjelmare; Mikaela Wiking; Rutger Schutten; Linzi Campbell; Hjalti Leifsson; Scott D. Rhodes; Andie Nordgren; Kevin Smith; Bernard Revaz; Bergur Finnbogason; Attila Szantner; Emma Lundberg

Pattern recognition and classification of images are key challenges throughout the life sciences. We combined two approaches for large-scale classification of fluorescence microscopy images. First, using the publicly available data set from the Cell Atlas of the Human Protein Atlas (HPA), we integrated an image-classification task into a mainstream video game (EVE Online) as a mini-game, named Project Discovery. Participation by 322,006 gamers over 1 year provided nearly 33 million classifications of subcellular localization patterns, including patterns that were not previously annotated by the HPA. Second, we used deep learning to build an automated Localization Cellular Annotation Tool (Loc-CAT). This tool classifies proteins into 29 subcellular localization patterns and can deal efficiently with multi-localization proteins, performing robustly across different cell types. Combining the annotations of gamers and deep learning, we applied transfer learning to create a boosted learner that can characterize subcellular protein distribution with F1 score of 0.72. We found that engaging players of commercial computer games provided data that augmented deep learning and enabled scalable and readily improved image classification.


Science | 2017

A subcellular map of the human proteome

Peter Thul; Lovisa Åkesson; Mikaela Wiking; Diana Mahdessian; Aikaterini Geladaki; Hammou Ait Blal; Tove Alm; Anna Asplund; Lars Björk; Lisa M. Breckels; Anna Bäckström; Frida Danielsson; Linn Fagerberg; Jenny Fall; Laurent Gatto; Christian Gnann; Sophia Hober; Martin Hjelmare; Fredric Johansson; Sunjae Lee; Cecilia Lindskog; Jan Mulder; Claire M Mulvey; Peter Nilsson; Per Oksvold; Johan Rockberg; Rutger Schutten; Jochen M. Schwenk; Åsa Sivertsson; Evelina Sjöstedt


Molecular Biology of the Cell | 2017

Exploring the Proteome of Multilocalizing Proteins

Peter Thul; Lovisa Åkesson; Diana Mahdessian; Anna Bäckström; Frida Danielsson; Christian Gnann; Martin Hjelmare; Rutger Schutten; Charlotte Stadler; Devin P. Sullivan; Casper Winsnes; Gabriella Galea; Rainer Pepperkok; Mathias Uhlén; Emma Lundberg


Molecular Biology of the Cell | 2017

An image-based subcellular map of the human proteome.

Peter Thul; Lovisa Åkesson; Diana Mahdessian; Anna Bäckström; Frida Danielsson; Christian Gnann; Martin Hjelmare; Ragnar Schutten; Charlotte Stadler; Devin P. Sullivan; Casper Winsnes; Mathias Uhlén; Emma Lundberg


Archive | 2016

An antibody validation scheme for immunofluorescence using gene tagging

Marie Skogs; Charlotte Stadler; Rutger Schutten; Martin Hjelmare; Christian Gnann; Ina Poser; Anthony A. Hyman; Mathias Uhlen; Emma Lundberg


Molecular Biology of the Cell | 2016

An image-based view of the microtubule proteome

Frida Danielsson; Marie Skogs; Lovisa Åkesson; Diana Mahdessian; Devin P. Sullivan; Peter Thul; Mikaela Wiking; Lars Björk; Rutger Schutten; Carl Ait Blal; Martin Hjelmare; Christian Gnann; Mathias Uhlén; Emma Lundberg

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Emma Lundberg

Royal Institute of Technology

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Charlotte Stadler

Royal Institute of Technology

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Mathias Uhlén

Royal Institute of Technology

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Rutger Schutten

Royal Institute of Technology

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Mikaela Wiking

Royal Institute of Technology

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Christian Gnann

Royal Institute of Technology

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Diana Mahdessian

Royal Institute of Technology

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Frida Danielsson

Royal Institute of Technology

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Lovisa Åkesson

Royal Institute of Technology

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Marie Skogs

Royal Institute of Technology

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