16 results on '"Bergenstråhle, L"'
Search Results
2. Single-cell meta-analysis of SARS-CoV-2 entry genes across tissues and demographics
- Author
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Muus, C, Luecken, MD, Eraslan, G, Sikkema, L, Waghray, A, Heimberg, G, Kobayashi, Y, Vaishnav, ED, Subramanian, A, Smillie, C, Jagadeesh, KA, Duong, ET, Fiskin, E, Triglia, ET, Ansari, M, Cai, P, Lin, B, Buchanan, J, Chen, S, Shu, J, Haber, AL, Chung, H, Montoro, DT, Adams, T, Aliee, H, Allon, SJ, Andrusivova, Z, Angelidis, I, Ashenberg, O, Bassler, K, Bécavin, C, Benhar, I, Bergenstråhle, J, Bergenstråhle, L, Bolt, L, Braun, E, Bui, LT, Callori, S, Chaffin, M, Chichelnitskiy, E, Chiou, J, Conlon, TM, Cuoco, MS, Cuomo, ASE, Deprez, M, Duclos, G, Fine, D, Fischer, DS, Ghazanfar, S, Gillich, A, Giotti, B, Gould, J, Guo, M, Gutierrez, AJ, Habermann, AC, Harvey, T, He, P, Hou, X, Hu, L, Hu, Y, Jaiswal, A, Ji, L, Jiang, P, Kapellos, TS, Kuo, CS, Larsson, L, Leney-Greene, MA, Lim, K, Litviňuková, M, Ludwig, LS, Lukassen, S, Luo, W, Maatz, H, Madissoon, E, Mamanova, L, Manakongtreecheep, K, Leroy, S, Mayr, CH, Mbano, IM, McAdams, AM, Nabhan, AN, Nyquist, SK, Penland, L, Poirion, OB, Poli, S, Qi, C, Queen, R, Reichart, D, Rosas, I, Schupp, JC, Shea, CV, Shi, X, Sinha, R, Sit, RV, Slowikowski, K, Slyper, M, Smith, NP, Sountoulidis, A, Strunz, M, Sullivan, TB, Sun, D, Talavera-López, C, Tan, P, Tantivit, J, Travaglini, KJ, Tucker, NR, Vernon, KA, Wadsworth, MH, Waldman, J, Wang, X, Xu, K, Yan, W, Zhao, W, Ziegler, CGK, NHLBI LungMap Consortium, and Human Cell Atlas Lung Biological Network
- Subjects
Adult ,Male ,Cathepsin L ,Immunology ,Respiratory System ,Datasets as Topic ,Humans ,Lung ,11 Medical and Health Sciences ,Aged ,Demography ,Aged, 80 and over ,SARS-CoV-2 ,Sequence Analysis, RNA ,Gene Expression Profiling ,Serine Endopeptidases ,COVID-19 ,respiratory system ,Middle Aged ,Virus Internalization ,Organ Specificity ,Alveolar Epithelial Cells ,Host-Pathogen Interactions ,Female ,Angiotensin-Converting Enzyme 2 ,Single-Cell Analysis - Abstract
Angiotensin-converting enzyme 2 (ACE2) and accessory proteases (TMPRSS2 and CTSL) are needed for severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) cellular entry, and their expression may shed light on viral tropism and impact across the body. We assessed the cell-type-specific expression of ACE2, TMPRSS2 and CTSL across 107 single-cell RNA-sequencing studies from different tissues. ACE2, TMPRSS2 and CTSL are coexpressed in specific subsets of respiratory epithelial cells in the nasal passages, airways and alveoli, and in cells from other organs associated with coronavirus disease 2019 (COVID-19) transmission or pathology. We performed a meta-analysis of 31 lung single-cell RNA-sequencing studies with 1,320,896 cells from 377 nasal, airway and lung parenchyma samples from 228 individuals. This revealed cell-type-specific associations of age, sex and smoking with expression levels of ACE2, TMPRSS2 and CTSL. Expression of entry factors increased with age and in males, including in airway secretory cells and alveolar type 2 cells. Expression programs shared by ACE2+TMPRSS2+ cells in nasal, lung and gut tissues included genes that may mediate viral entry, key immune functions and epithelial-macrophage cross-talk, such as genes involved in the interleukin-6, interleukin-1, tumor necrosis factor and complement pathways. Cell-type-specific expression patterns may contribute to the pathogenesis of COVID-19, and our work highlights putative molecular pathways for therapeutic intervention.
- Published
- 2020
3. Single-cell meta-analysis of SARS-CoV-2 entry genes across tissues and demographics
- Author
-
Muus, C, Luecken, MD, Eraslan, G, Sikkema, L, Waghray, A, Heimberg, G, Kobayashi, Y, Vaishnav, ED, Subramanian, A, Smillie, C, Jagadeesh, KA, Duong, ET, Fiskin, E, Triglia, ET, Ansari, M, Cai, P, Lin, B, Buchanan, J, Chen, S, Shu, J, Haber, AL, Chung, H, Montoro, DT, Adams, T, Aliee, H, Allon, SJ, Andrusivova, Z, Angelidis, I, Ashenberg, O, Bassler, K, Bécavin, C, Benhar, I, Bergenstråhle, J, Bergenstråhle, L, Bolt, L, Braun, E, Bui, LT, Callori, S, Chaffin, M, Chichelnitskiy, E, Chiou, J, Conlon, TM, Cuoco, MS, Cuomo, ASE, Deprez, M, Duclos, G, Fine, D, Fischer, DS, Ghazanfar, S, Gillich, A, Giotti, B, Gould, J, Guo, M, Gutierrez, AJ, Habermann, AC, Harvey, T, He, P, Hou, X, Hu, L, Hu, Y, Jaiswal, A, Ji, L, Jiang, P, Kapellos, TS, Kuo, CS, Larsson, L, Leney-Greene, MA, Lim, K, Litviňuková, M, Ludwig, LS, Lukassen, S, Luo, W, Maatz, H, Madissoon, E, Mamanova, L, Manakongtreecheep, K, Leroy, S, Mayr, CH, Mbano, IM, McAdams, AM, Nabhan, AN, Nyquist, SK, Penland, L, Poirion, OB, Poli, S, Qi, CC, Queen, R, Reichart, D, Rosas, I, Schupp, JC, Shea, CV, Shi, X, Sinha, R, Sit, RV, Slowikowski, K, Slyper, M, Smith, NP, Sountoulidis, A, Strunz, M, Sullivan, TB, Powell, Joseph ; https://orcid.org/0000-0001-9031-6356, Muus, C, Luecken, MD, Eraslan, G, Sikkema, L, Waghray, A, Heimberg, G, Kobayashi, Y, Vaishnav, ED, Subramanian, A, Smillie, C, Jagadeesh, KA, Duong, ET, Fiskin, E, Triglia, ET, Ansari, M, Cai, P, Lin, B, Buchanan, J, Chen, S, Shu, J, Haber, AL, Chung, H, Montoro, DT, Adams, T, Aliee, H, Allon, SJ, Andrusivova, Z, Angelidis, I, Ashenberg, O, Bassler, K, Bécavin, C, Benhar, I, Bergenstråhle, J, Bergenstråhle, L, Bolt, L, Braun, E, Bui, LT, Callori, S, Chaffin, M, Chichelnitskiy, E, Chiou, J, Conlon, TM, Cuoco, MS, Cuomo, ASE, Deprez, M, Duclos, G, Fine, D, Fischer, DS, Ghazanfar, S, Gillich, A, Giotti, B, Gould, J, Guo, M, Gutierrez, AJ, Habermann, AC, Harvey, T, He, P, Hou, X, Hu, L, Hu, Y, Jaiswal, A, Ji, L, Jiang, P, Kapellos, TS, Kuo, CS, Larsson, L, Leney-Greene, MA, Lim, K, Litviňuková, M, Ludwig, LS, Lukassen, S, Luo, W, Maatz, H, Madissoon, E, Mamanova, L, Manakongtreecheep, K, Leroy, S, Mayr, CH, Mbano, IM, McAdams, AM, Nabhan, AN, Nyquist, SK, Penland, L, Poirion, OB, Poli, S, Qi, CC, Queen, R, Reichart, D, Rosas, I, Schupp, JC, Shea, CV, Shi, X, Sinha, R, Sit, RV, Slowikowski, K, Slyper, M, Smith, NP, Sountoulidis, A, Strunz, M, Sullivan, TB, and Powell, Joseph ; https://orcid.org/0000-0001-9031-6356
- Abstract
Angiotensin-converting enzyme 2 (ACE2) and accessory proteases (TMPRSS2 and CTSL) are needed for severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) cellular entry, and their expression may shed light on viral tropism and impact across the body. We assessed the cell-type-specific expression of ACE2, TMPRSS2 and CTSL across 107 single-cell RNA-sequencing studies from different tissues. ACE2, TMPRSS2 and CTSL are coexpressed in specific subsets of respiratory epithelial cells in the nasal passages, airways and alveoli, and in cells from other organs associated with coronavirus disease 2019 (COVID-19) transmission or pathology. We performed a meta-analysis of 31 lung single-cell RNA-sequencing studies with 1,320,896 cells from 377 nasal, airway and lung parenchyma samples from 228 individuals. This revealed cell-type-specific associations of age, sex and smoking with expression levels of ACE2, TMPRSS2 and CTSL. Expression of entry factors increased with age and in males, including in airway secretory cells and alveolar type 2 cells. Expression programs shared by ACE2+TMPRSS2+ cells in nasal, lung and gut tissues included genes that may mediate viral entry, key immune functions and epithelial–macrophage cross-talk, such as genes involved in the interleukin-6, interleukin-1, tumor necrosis factor and complement pathways. Cell-type-specific expression patterns may contribute to the pathogenesis of COVID-19, and our work highlights putative molecular pathways for therapeutic intervention.
- Published
- 2021
4. A0480 - The spatial landscape of clonal somatic mutations in benign and malignant prostate epithelia
- Author
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Erickson, A.M., Berglund, E., He, M., Marklund, M., Mirzazadeh, R., Schultz, N., Bergenstråhle, L., Kvastad, L., Andersson, A., Bergenstråhle, J., Larsson, L., Rajakumar, T., Thrane, K., Ji, A.L., Tarish, F., Tanoglidi, A., Maaskola, J., Colling, R., Mirtti, T., Hamdy, F.C., Woodcock, D.J., Helleday, T., Mills, I.G., Lamb, A., and Lundenberg, J.
- Published
- 2022
- Full Text
- View/download PDF
5. Spatial landmark detection and tissue registration with deep learning.
- Author
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Ekvall M, Bergenstråhle L, Andersson A, Czarnewski P, Olegård J, Käll L, and Lundeberg J
- Subjects
- Image Processing, Computer-Assisted methods, Deep Learning
- Abstract
Spatial landmarks are crucial in describing histological features between samples or sites, tracking regions of interest in microscopy, and registering tissue samples within a common coordinate framework. Although other studies have explored unsupervised landmark detection, existing methods are not well-suited for histological image data as they often require a large number of images to converge, are unable to handle nonlinear deformations between tissue sections and are ineffective for z-stack alignment, other modalities beyond image data or multimodal data. We address these challenges by introducing effortless landmark detection, a new unsupervised landmark detection and registration method using neural-network-guided thin-plate splines. Our proposed method is evaluated on a diverse range of datasets including histology and spatially resolved transcriptomics, demonstrating superior performance in both accuracy and stability compared to existing approaches., (© 2024. The Author(s).)
- Published
- 2024
- Full Text
- View/download PDF
6. Spatio-temporal analysis of prostate tumors in situ suggests pre-existence of treatment-resistant clones.
- Author
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Marklund M, Schultz N, Friedrich S, Berglund E, Tarish F, Tanoglidi A, Liu Y, Bergenstråhle L, Erickson A, Helleday T, Lamb AD, Sonnhammer E, and Lundeberg J
- Subjects
- Androgen Antagonists pharmacology, Androgen Antagonists therapeutic use, Androgens metabolism, Clone Cells metabolism, Humans, Male, Spatio-Temporal Analysis, Prostatic Neoplasms drug therapy, Prostatic Neoplasms genetics, Prostatic Neoplasms metabolism, Receptors, Androgen genetics, Receptors, Androgen metabolism
- Abstract
The molecular mechanisms underlying lethal castration-resistant prostate cancer remain poorly understood, with intratumoral heterogeneity a likely contributing factor. To examine the temporal aspects of resistance, we analyze tumor heterogeneity in needle biopsies collected before and after treatment with androgen deprivation therapy. By doing so, we are able to couple clinical responsiveness and morphological information such as Gleason score to transcriptome-wide data. Our data-driven analysis of transcriptomes identifies several distinct intratumoral cell populations, characterized by their unique gene expression profiles. Certain cell populations present before treatment exhibit gene expression profiles that match those of resistant tumor cell clusters, present after treatment. We confirm that these clusters are resistant by the localization of active androgen receptors to the nuclei in cancer cells post-treatment. Our data also demonstrates that most stromal cells adjacent to resistant clusters do not express the androgen receptor, and we identify differentially expressed genes for these cells. Altogether, this study shows the potential to increase the power in predicting resistant tumors., (© 2022. The Author(s).)
- Published
- 2022
- Full Text
- View/download PDF
7. Spatially resolved clonal copy number alterations in benign and malignant tissue.
- Author
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Erickson A, He M, Berglund E, Marklund M, Mirzazadeh R, Schultz N, Kvastad L, Andersson A, Bergenstråhle L, Bergenstråhle J, Larsson L, Alonso Galicia L, Shamikh A, Basmaci E, Díaz De Ståhl T, Rajakumar T, Doultsinos D, Thrane K, Ji AL, Khavari PA, Tarish F, Tanoglidi A, Maaskola J, Colling R, Mirtti T, Hamdy FC, Woodcock DJ, Helleday T, Mills IG, Lamb AD, and Lundeberg J
- Subjects
- Early Detection of Cancer, Genome, Human, Genomics, Humans, Male, Models, Biological, Prostate metabolism, Prostate pathology, Prostatic Neoplasms genetics, Prostatic Neoplasms pathology, Transcriptome genetics, Clone Cells metabolism, Clone Cells pathology, DNA Copy Number Variations genetics, Genomic Instability genetics, Neoplasms genetics, Neoplasms pathology, Spatial Analysis
- Abstract
Defining the transition from benign to malignant tissue is fundamental to improving early diagnosis of cancer
1 . Here we use a systematic approach to study spatial genome integrity in situ and describe previously unidentified clonal relationships. We used spatially resolved transcriptomics2 to infer spatial copy number variations in >120,000 regions across multiple organs, in benign and malignant tissues. We demonstrate that genome-wide copy number variation reveals distinct clonal patterns within tumours and in nearby benign tissue using an organ-wide approach focused on the prostate. Our results suggest a model for how genomic instability arises in histologically benign tissue that may represent early events in cancer evolution. We highlight the power of capturing the molecular and spatial continuums in a tissue context and challenge the rationale for treatment paradigms, including focal therapy., (© 2022. The Author(s).)- Published
- 2022
- Full Text
- View/download PDF
8. SnapShot: Spatial transcriptomics.
- Author
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Larsson L, Bergenstråhle L, He M, Andrusivova Z, and Lundeberg J
- Subjects
- Animals, Humans, Sequence Analysis, RNA, Spatial Analysis, Transcriptome
- Abstract
Spatially resolved transcriptomics methodologies using RNA sequencing principles have and will continue to contribute to decode the molecular landscape of tissues. Linking quantitative sequencing data with tissue morphology empowers profiling of cellular morphology and transcription over time and space in health and disease. To view this SnapShot, open or download the PDF., (Copyright © 2022 Elsevier Inc. All rights reserved.)
- Published
- 2022
- Full Text
- View/download PDF
9. Super-resolved spatial transcriptomics by deep data fusion.
- Author
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Bergenstråhle L, He B, Bergenstråhle J, Abalo X, Mirzazadeh R, Thrane K, Ji AL, Andersson A, Larsson L, Stakenborg N, Boeckxstaens G, Khavari P, Zou J, Lundeberg J, and Maaskola J
- Subjects
- Transcriptome genetics
- Abstract
Current methods for spatial transcriptomics are limited by low spatial resolution. Here we introduce a method that integrates spatial gene expression data with histological image data from the same tissue section to infer higher-resolution expression maps. Using a deep generative model, our method characterizes the transcriptome of micrometer-scale anatomical features and can predict spatial gene expression from histology images alone., (© 2021. The Author(s), under exclusive licence to Springer Nature America, Inc.)
- Published
- 2022
- Full Text
- View/download PDF
10. Single-cell meta-analysis of SARS-CoV-2 entry genes across tissues and demographics.
- Author
-
Muus C, Luecken MD, Eraslan G, Sikkema L, Waghray A, Heimberg G, Kobayashi Y, Vaishnav ED, Subramanian A, Smillie C, Jagadeesh KA, Duong ET, Fiskin E, Torlai Triglia E, Ansari M, Cai P, Lin B, Buchanan J, Chen S, Shu J, Haber AL, Chung H, Montoro DT, Adams T, Aliee H, Allon SJ, Andrusivova Z, Angelidis I, Ashenberg O, Bassler K, Bécavin C, Benhar I, Bergenstråhle J, Bergenstråhle L, Bolt L, Braun E, Bui LT, Callori S, Chaffin M, Chichelnitskiy E, Chiou J, Conlon TM, Cuoco MS, Cuomo ASE, Deprez M, Duclos G, Fine D, Fischer DS, Ghazanfar S, Gillich A, Giotti B, Gould J, Guo M, Gutierrez AJ, Habermann AC, Harvey T, He P, Hou X, Hu L, Hu Y, Jaiswal A, Ji L, Jiang P, Kapellos TS, Kuo CS, Larsson L, Leney-Greene MA, Lim K, Litviňuková M, Ludwig LS, Lukassen S, Luo W, Maatz H, Madissoon E, Mamanova L, Manakongtreecheep K, Leroy S, Mayr CH, Mbano IM, McAdams AM, Nabhan AN, Nyquist SK, Penland L, Poirion OB, Poli S, Qi C, Queen R, Reichart D, Rosas I, Schupp JC, Shea CV, Shi X, Sinha R, Sit RV, Slowikowski K, Slyper M, Smith NP, Sountoulidis A, Strunz M, Sullivan TB, Sun D, Talavera-López C, Tan P, Tantivit J, Travaglini KJ, Tucker NR, Vernon KA, Wadsworth MH, Waldman J, Wang X, Xu K, Yan W, Zhao W, and Ziegler CGK
- Subjects
- Adult, Aged, Aged, 80 and over, Alveolar Epithelial Cells metabolism, Alveolar Epithelial Cells virology, Angiotensin-Converting Enzyme 2 genetics, Angiotensin-Converting Enzyme 2 metabolism, COVID-19 pathology, COVID-19 virology, Cathepsin L genetics, Cathepsin L metabolism, Datasets as Topic statistics & numerical data, Demography, Female, Gene Expression Profiling statistics & numerical data, Humans, Lung metabolism, Lung virology, Male, Middle Aged, Organ Specificity genetics, Respiratory System metabolism, Respiratory System virology, Sequence Analysis, RNA methods, Serine Endopeptidases genetics, Serine Endopeptidases metabolism, Single-Cell Analysis methods, COVID-19 epidemiology, COVID-19 genetics, Host-Pathogen Interactions genetics, SARS-CoV-2 physiology, Sequence Analysis, RNA statistics & numerical data, Single-Cell Analysis statistics & numerical data, Virus Internalization
- Abstract
Angiotensin-converting enzyme 2 (ACE2) and accessory proteases (TMPRSS2 and CTSL) are needed for severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) cellular entry, and their expression may shed light on viral tropism and impact across the body. We assessed the cell-type-specific expression of ACE2, TMPRSS2 and CTSL across 107 single-cell RNA-sequencing studies from different tissues. ACE2, TMPRSS2 and CTSL are coexpressed in specific subsets of respiratory epithelial cells in the nasal passages, airways and alveoli, and in cells from other organs associated with coronavirus disease 2019 (COVID-19) transmission or pathology. We performed a meta-analysis of 31 lung single-cell RNA-sequencing studies with 1,320,896 cells from 377 nasal, airway and lung parenchyma samples from 228 individuals. This revealed cell-type-specific associations of age, sex and smoking with expression levels of ACE2, TMPRSS2 and CTSL. Expression of entry factors increased with age and in males, including in airway secretory cells and alveolar type 2 cells. Expression programs shared by ACE2
+ TMPRSS2+ cells in nasal, lung and gut tissues included genes that may mediate viral entry, key immune functions and epithelial-macrophage cross-talk, such as genes involved in the interleukin-6, interleukin-1, tumor necrosis factor and complement pathways. Cell-type-specific expression patterns may contribute to the pathogenesis of COVID-19, and our work highlights putative molecular pathways for therapeutic intervention.- Published
- 2021
- Full Text
- View/download PDF
11. Single-cell and spatial transcriptomics enables probabilistic inference of cell type topography.
- Author
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Andersson A, Bergenstråhle J, Asp M, Bergenstråhle L, Jurek A, Fernández Navarro J, and Lundeberg J
- Subjects
- Animals, Humans, Mice, Organ Specificity, Organogenesis genetics, Computational Biology methods, Computational Biology standards, Gene Expression Profiling methods, Single-Cell Analysis methods, Single-Cell Analysis standards, Transcriptome
- Abstract
The field of spatial transcriptomics is rapidly expanding, and with it the repertoire of available technologies. However, several of the transcriptome-wide spatial assays do not operate on a single cell level, but rather produce data comprised of contributions from a - potentially heterogeneous - mixture of cells. Still, these techniques are attractive to use when examining complex tissue specimens with diverse cell populations, where complete expression profiles are required to properly capture their richness. Motivated by an interest to put gene expression into context and delineate the spatial arrangement of cell types within a tissue, we here present a model-based probabilistic method that uses single cell data to deconvolve the cell mixtures in spatial data. To illustrate the capacity of our method, we use data from different experimental platforms and spatially map cell types from the mouse brain and developmental heart, which arrange as expected.
- Published
- 2020
- Full Text
- View/download PDF
12. Integrating spatial gene expression and breast tumour morphology via deep learning.
- Author
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He B, Bergenstråhle L, Stenbeck L, Abid A, Andersson A, Borg Å, Maaskola J, Lundeberg J, and Zou J
- Subjects
- Algorithms, Biomarkers, Tumor genetics, Biomarkers, Tumor metabolism, Breast Neoplasms metabolism, Female, Gene Expression Profiling methods, Humans, Image Processing, Computer-Assisted, Reproducibility of Results, Transcriptome, Breast Neoplasms genetics, Breast Neoplasms pathology, Deep Learning
- Abstract
Spatial transcriptomics allows for the measurement of RNA abundance at a high spatial resolution, making it possible to systematically link the morphology of cellular neighbourhoods and spatially localized gene expression. Here, we report the development of a deep learning algorithm for the prediction of local gene expression from haematoxylin-and-eosin-stained histopathology images using a new dataset of 30,612 spatially resolved gene expression data matched to histopathology images from 23 patients with breast cancer. We identified over 100 genes, including known breast cancer biomarkers of intratumoral heterogeneity and the co-localization of tumour growth and immune activation, the expression of which can be predicted from the histopathology images at a resolution of 100 µm. We also show that the algorithm generalizes well to The Cancer Genome Atlas and to other breast cancer gene expression datasets without the need for re-training. Predicting the spatially resolved transcriptome of a tissue directly from tissue images may enable image-based screening for molecular biomarkers with spatial variation.
- Published
- 2020
- Full Text
- View/download PDF
13. SpatialCPie: an R/Bioconductor package for spatial transcriptomics cluster evaluation.
- Author
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Bergenstråhle J, Bergenstråhle L, and Lundeberg J
- Subjects
- Cluster Analysis, Gene Expression Regulation, Developmental, Heart embryology, Humans, Software, Transcriptome genetics
- Abstract
Background: Technological developments in the emerging field of spatial transcriptomics have opened up an unexplored landscape where transcript information is put in a spatial context. Clustering commonly constitutes a central component in analyzing this type of data. However, deciding on the number of clusters to use and interpreting their relationships can be difficult., Results: We introduce SpatialCPie, an R package designed to facilitate cluster evaluation for spatial transcriptomics data. SpatialCPie clusters the data at multiple resolutions. The results are visualized with pie charts that indicate the similarity between spatial regions and clusters and a cluster graph that shows the relationships between clusters at different resolutions. We demonstrate SpatialCPie on several publicly available datasets., Conclusions: SpatialCPie provides intuitive visualizations of cluster relationships when dealing with Spatial Transcriptomics data.
- Published
- 2020
- Full Text
- View/download PDF
14. Automation of Spatial Transcriptomics library preparation to enable rapid and robust insights into spatial organization of tissues.
- Author
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Berglund E, Saarenpää S, Jemt A, Gruselius J, Larsson L, Bergenstråhle L, Lundeberg J, and Giacomello S
- Subjects
- Animals, Automation, Computational Biology, Gene Library, High-Throughput Nucleotide Sequencing instrumentation, Mice, Mice, Inbred C57BL, Olfactory Bulb metabolism, Robotics, Gene Expression Regulation genetics, High-Throughput Nucleotide Sequencing methods, Transcriptome
- Abstract
Background: Interest in studying the spatial distribution of gene expression in tissues is rapidly increasing. Spatial Transcriptomics is a novel sequencing-based technology that generates high-throughput information on the distribution, heterogeneity and co-expression of cells in tissues. Unfortunately, manual preparation of high-quality sequencing libraries is time-consuming and subject to technical variability due to human error during manual pipetting, which results in sample swapping and the accidental introduction of batch effects. All these factors complicate the production and interpretation of biological datasets., Results: We have integrated an Agilent Bravo Automated Liquid Handling Platform into the Spatial Transcriptomics workflow. Compared to the previously reported Magnatrix 8000+ automated protocol, this approach increases the number of samples processed per run, reduces sample preparation time by 35%, and minimizes batch effects between samples. The new approach is also shown to be highly accurate and almost completely free from technical variability between prepared samples., Conclusions: The new automated Spatial Transcriptomics protocol using the Agilent Bravo Automated Liquid Handling Platform rapidly generates high-quality Spatial Transcriptomics libraries. Given the wide use of the Agilent Bravo Automated Liquid Handling Platform in research laboratories and facilities, this will allow many researchers to quickly create robust Spatial Transcriptomics libraries.
- Published
- 2020
- Full Text
- View/download PDF
15. High-definition spatial transcriptomics for in situ tissue profiling.
- Author
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Vickovic S, Eraslan G, Salmén F, Klughammer J, Stenbeck L, Schapiro D, Äijö T, Bonneau R, Bergenstråhle L, Navarro JF, Gould J, Griffin GK, Borg Å, Ronaghi M, Frisén J, Lundeberg J, Regev A, and Ståhl PL
- Subjects
- Animals, Breast Neoplasms pathology, Female, Humans, Mice, Olfactory Bulb cytology, Sequence Analysis, RNA methods, Single-Cell Analysis methods, Tissue Array Analysis, Gene Expression Profiling, Transcriptome
- Abstract
Spatial and molecular characteristics determine tissue function, yet high-resolution methods to capture both concurrently are lacking. Here, we developed high-definition spatial transcriptomics, which captures RNA from histological tissue sections on a dense, spatially barcoded bead array. Each experiment recovers several hundred thousand transcript-coupled spatial barcodes at 2-μm resolution, as demonstrated in mouse brain and primary breast cancer. This opens the way to high-resolution spatial analysis of cells and tissues.
- Published
- 2019
- Full Text
- View/download PDF
16. ST Spot Detector: a web-based application for automatic spot and tissue detection for spatial Transcriptomics image datasets.
- Author
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Wong K, Navarro JF, Bergenstråhle L, Ståhl PL, and Lundeberg J
- Subjects
- Animals, Humans, Internet, Plants, Sequence Analysis, RNA methods, Spatial Analysis, Gene Expression Profiling methods, Image Interpretation, Computer-Assisted methods, Software
- Abstract
Motiviation: Spatial Transcriptomics (ST) is a method which combines high resolution tissue imaging with high troughput transcriptome sequencing data. This data must be aligned with the images for correct visualization, a process that involves several manual steps., Results: Here we present ST Spot Detector, a web tool that automates and facilitates this alignment through a user friendly interface., Contact: jose.fernandez.navarro@scilifelab.se., Supplementary Information: Supplementary data are available at Bioinformatics online.
- Published
- 2018
- Full Text
- View/download PDF
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