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1.
Genome Biol ; 24(1): 120, 2023 05 17.
Article in English | MEDLINE | ID: mdl-37198601

ABSTRACT

Spatial transcriptomics maps gene expression across tissues, posing the challenge of determining the spatial arrangement of different cell types. However, spatial transcriptomics spots contain multiple cells. Therefore, the observed signal comes from mixtures of cells of different types. Here, we propose an innovative probabilistic model, Celloscope, that utilizes established prior knowledge on marker genes for cell type deconvolution from spatial transcriptomics data. Celloscope outperforms other methods on simulated data, successfully indicates known brain structures and spatially distinguishes between inhibitory and excitatory neuron types based in mouse brain tissue, and dissects large heterogeneity of immune infiltrate composition in prostate gland tissue.


Subject(s)
Gene Expression Profiling , Transcriptome , Male , Animals , Mice , Neurons , Brain , Models, Statistical
2.
BMC Cancer ; 22(1): 1001, 2022 Sep 21.
Article in English | MEDLINE | ID: mdl-36131239

ABSTRACT

BACKGROUND: Despite the fact that tumor microenvironment (TME) and gene mutations are the main determinants of progression of the deadliest cancer in the world - lung cancer, their interrelations are not well understood. Digital pathology data provides a unique insight into the spatial composition of the TME. Various spatial metrics and machine learning approaches were proposed for prediction of either patient survival or gene mutations from this data. Still, these approaches are limited in the scope of analyzed features and in their explainability, and as such fail to transfer to clinical practice. METHODS: Here, we generated 23,199 image patches from 26 hematoxylin-and-eosin (H&E)-stained lung cancer tissue sections and annotated them into 9 different tissue classes. Using this dataset, we trained a deep neural network ARA-CNN. Next, we applied the trained network to segment 467 lung cancer H&E images from The Cancer Genome Atlas (TCGA) database. We used the segmented images to compute human-interpretable features reflecting the heterogeneous composition of the TME, and successfully utilized them to predict patient survival and cancer gene mutations. RESULTS: We achieved per-class AUC ranging from 0.72 to 0.99 for classifying tissue types in lung cancer with ARA-CNN. Machine learning models trained on the proposed human-interpretable features achieved a c-index of 0.723 in the task of survival prediction and AUC up to 73.5% for PDGFRB in the task of mutation classification. CONCLUSIONS: We presented a framework that accurately predicted survival and gene mutations in lung adenocarcinoma patients based on human-interpretable features extracted from H&E slides. Our approach can provide important insights for designing novel cancer treatments, by linking the spatial structure of the TME in lung adenocarcinoma to gene mutations and patient survival. It can also expand our understanding of the effects that the TME has on tumor evolutionary processes. Our approach can be generalized to different cancer types to inform precision medicine strategies.


Subject(s)
Adenocarcinoma of Lung , Carcinoma, Non-Small-Cell Lung , Deep Learning , Lung Neoplasms , Adenocarcinoma of Lung/genetics , Carcinoma, Non-Small-Cell Lung/genetics , Eosine Yellowish-(YS) , Hematoxylin , Humans , Lung Neoplasms/genetics , Lung Neoplasms/pathology , Mutation , Receptor, Platelet-Derived Growth Factor beta , Tumor Microenvironment/genetics
3.
Genome Biol ; 21(1): 31, 2020 02 07.
Article in English | MEDLINE | ID: mdl-32033589

ABSTRACT

The recent boom in microfluidics and combinatorial indexing strategies, combined with low sequencing costs, has empowered single-cell sequencing technology. Thousands-or even millions-of cells analyzed in a single experiment amount to a data revolution in single-cell biology and pose unique data science problems. Here, we outline eleven challenges that will be central to bringing this emerging field of single-cell data science forward. For each challenge, we highlight motivating research questions, review prior work, and formulate open problems. This compendium is for established researchers, newcomers, and students alike, highlighting interesting and rewarding problems for the coming years.


Subject(s)
Data Science/methods , Genomics/methods , RNA-Seq/methods , Single-Cell Analysis/methods , Animals , Humans
4.
Sci Rep ; 9(1): 14347, 2019 10 04.
Article in English | MEDLINE | ID: mdl-31586139

ABSTRACT

Machine learning algorithms hold the promise to effectively automate the analysis of histopathological images that are routinely generated in clinical practice. Any machine learning method used in the clinical diagnostic process has to be extremely accurate and, ideally, provide a measure of uncertainty for its predictions. Such accurate and reliable classifiers need enough labelled data for training, which requires time-consuming and costly manual annotation by pathologists. Thus, it is critical to minimise the amount of data needed to reach the desired accuracy by maximising the efficiency of training. We propose an accurate, reliable and active (ARA) image classification framework and introduce a new Bayesian Convolutional Neural Network (ARA-CNN) for classifying histopathological images of colorectal cancer. The model achieves exceptional classification accuracy, outperforming other models trained on the same dataset. The network outputs an uncertainty measurement for each tested image. We show that uncertainty measures can be used to detect mislabelled training samples and can be employed in an efficient active learning workflow. Using a variational dropout-based entropy measure of uncertainty in the workflow speeds up the learning process by roughly 45%. Finally, we utilise our model to segment whole-slide images of colorectal tissue and compute segmentation-based spatial statistics.


Subject(s)
Colorectal Neoplasms/diagnosis , Deep Learning , Image Processing, Computer-Assisted , Pathology, Clinical/methods , Bayes Theorem , Colon/pathology , Colorectal Neoplasms/pathology , Humans , Rectum/pathology , Reproducibility of Results , Uncertainty , Workflow
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