15 results on '"Polanska, Joanna"'
Search Results
2. Pathological changes or technical artefacts? The problem of the heterogenous databases in COVID-19 CXR image analysis
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Socha, Marek, Prażuch, Wojciech, Suwalska, Aleksandra, Foszner, Paweł, Tobiasz, Joanna, Jaroszewicz, Jerzy, Gruszczynska, Katarzyna, Sliwinska, Magdalena, Nowak, Mateusz, Gizycka, Barbara, Zapolska, Gabriela, Popiela, Tadeusz, Przybylski, Grzegorz, Fiedor, Piotr, Pawlowska, Malgorzata, Flisiak, Robert, Simon, Krzysztof, Walecki, Jerzy, Cieszanowski, Andrzej, Szurowska, Edyta, Marczyk, Michal, and Polanska, Joanna
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- 2023
3. POLCOVID: a multicenter multiclass chest X-ray database (Poland, 2020-2021)
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Suwalska, Aleksandra, Tobiasz, Joanna, Prazuch, Wojciech, Socha, Marek, Foszner, Pawel, Piotrowski, Damian, Gruszczynska, Katarzyna, Sliwinska, Magdalena, Walecki, Jerzy, Popiela, Tadeusz, Przybylski, Grzegorz, Nowak, Mateusz, Fiedor, Piotr, Pawlowska, Malgorzata, Flisiak, Robert, Simon, Krzysztof, Zapolska, Gabriela, Gizycka, Barbara, Szurowska, Edyta, Group, POLCOVID Study, Marczyk, Michal, Cieszanowski, Andrzej, and Polanska, Joanna
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FOS: Computer and information sciences ,Computer Vision and Pattern Recognition (cs.CV) ,I.4.6 ,Image and Video Processing (eess.IV) ,Computer Science - Computer Vision and Pattern Recognition ,FOS: Electrical engineering, electronic engineering, information engineering ,I.4.9 ,Electrical Engineering and Systems Science - Image and Video Processing - Abstract
The outbreak of the SARS-CoV-2 pandemic has put healthcare systems worldwide to their limits, resulting in increased waiting time for diagnosis and required medical assistance. With chest radiographs (CXR) being one of the most common COVID-19 diagnosis methods, many artificial intelligence tools for image-based COVID-19 detection have been developed, often trained on a small number of images from COVID-19-positive patients. Thus, the need for high-quality and well-annotated CXR image databases increased. This paper introduces POLCOVID dataset, containing chest X-ray (CXR) images of patients with COVID-19 or other-type pneumonia, and healthy individuals gathered from 15 Polish hospitals. The original radiographs are accompanied by the preprocessed images limited to the lung area and the corresponding lung masks obtained with the segmentation model. Moreover, the manually created lung masks are provided for a part of POLCOVID dataset and the other four publicly available CXR image collections. POLCOVID dataset can help in pneumonia or COVID-19 diagnosis, while the set of matched images and lung masks may serve for the development of lung segmentation solutions., Comment: 13 pages, 3 figures
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- 2022
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4. CIRCA: comprehensible online system in support of chest X-rays-based COVID-19 diagnosis
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Prazuch, Wojciech, Suwalska, Aleksandra, Socha, Marek, Tobiasz, Joanna, Foszner, Pawel, Jaroszewicz, Jerzy, Gruszczynska, Katarzyna, Sliwinska, Magdalena, Walecki, Jerzy, Popiela, Tadeusz, Przybylski, Grzegorz, Cieszanowski, Andrzej, Nowak, Mateusz, Pawlowska, Malgorzata, Flisiak, Robert, Simon, Krzysztof, Zapolska, Gabriela, Gizycka, Barbara, Szurowska, Edyta, Group, POLCOVID Study, Marczyk, Michal, and Polanska, Joanna
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FOS: Computer and information sciences ,Computer Vision and Pattern Recognition (cs.CV) ,Image and Video Processing (eess.IV) ,Computer Science - Computer Vision and Pattern Recognition ,FOS: Electrical engineering, electronic engineering, information engineering ,Electrical Engineering and Systems Science - Image and Video Processing - Abstract
Due to the large accumulation of patients requiring hospitalization, the COVID-19 pandemic disease caused a high overload of health systems, even in developed countries. Deep learning techniques based on medical imaging data can help in the faster detection of COVID-19 cases and monitoring of disease progression. Regardless of the numerous proposed solutions for lung X-rays, none of them is a product that can be used in the clinic. Five different datasets (POLCOVID, AIforCOVID, COVIDx, NIH, and artificially generated data) were used to construct a representative dataset of 23 799 CXRs for model training; 1 050 images were used as a hold-out test set, and 44 247 as independent test set (BIMCV database). A U-Net-based model was developed to identify a clinically relevant region of the CXR. Each image class (normal, pneumonia, and COVID-19) was divided into 3 subtypes using a 2D Gaussian mixture model. A decision tree was used to aggregate predictions from the InceptionV3 network based on processed CXRs and a dense neural network on radiomic features. The lung segmentation model gave the Sorensen-Dice coefficient of 94.86% in the validation dataset, and 93.36% in the testing dataset. In 5-fold cross-validation, the accuracy for all classes ranged from 91% to 93%, keeping slightly higher specificity than sensitivity and NPV than PPV. In the hold-out test set, the balanced accuracy ranged between 68% and 100%. The highest performance was obtained for the subtypes N1, P1, and C1. A similar performance was obtained on the independent dataset for normal and COVID-19 class subtypes. Seventy-six percent of COVID-19 patients wrongly classified as normal cases were annotated by radiologists as with no signs of disease. Finally, we developed the online service (https://circa.aei.polsl.pl) to provide access to fast diagnosis support tools.
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- 2022
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5. Making use of comparable health data to improve quality of care and outcomes in diabetes : The EUBIROD review of diabetes registries and data sources in Europe
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Carinci, Fabrizio, Štotl, Iztok, Cunningham, Scott, Poljicanin, Tamara, Pristas, Ivan, Traynor, Vivie, Olympios, George, Scoutellas, Vasos, Azzopardi, Joseph, Doggen, Kris, Sándor, János, Adany, Roza, Løvaas, Karianne, Jarosz- Chobot, Przemka, Polanska, Joanna, Pruna, Simion, de Lusignan, Simon, Monesi, Marcello, Di Bartolo, Paolo, Scheidt-Nave, Christa Elisabeth, Heidemann, Christin, Zucker, Inbar, Maurina, Anita, Lepiksone, Jana, Rossing, Peter, Arffman, Martti, Keskimäki, Ilmo, Gudbjornsdottir, Soffia, Di Iorio, Concetta Tania, Dupont, Elisabeth, de Sabata, Stella, Klazinga, Niek, Massi Benedetti, Massimo, Tampere University, and Health Sciences
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3141 Health care science ,diabetes, diabetes registries, quality of care, performance indicators, risk adjustment, health information ,3142 Public health care science, environmental and occupational health - Abstract
Background: Registries and data sources contain information that can be used on an ongoing basis to improve quality of care and outcomes of people with diabetes. As a specific task of the EU Bridge Health project, we carried out a survey of diabetes-related data sources in Europe. Objectives: We aimed to report on the organization of different sources of diabetes information, including their governance, information infrastructure and dissemination strategies for quality control, service planning, public health, policy and research. Methods: Survey using a structured questionnaire to collect targeted data from a network of collaborating institutions managing registries and data sources in 17 countries in the year 2017. Results: The 18 data sources participating in the study were most frequently academic centres (44.4%), national (72.2%), targeting all types of diabetes (61.1%) covering no more than 10% of the target population (44.4%). Although population-based in over a quarter of cases (27.8%), sources relied predominantly on provider-based datasets (38.5%), fewer using administrative data (16.6%). Data collection was continuous in the majority of cases (61.1%), but 50% could not perform data linkage. Public reports were more frequent (72.2%) as well as quality reports (77.8%), but one third did not provide feedback to policy and only half published ten or more peer reviewed papers during the last 5 years. Conclusions: The heterogeneous implementation of diabetes registries and data sources hampers the comparability of quality and outcomes across Europe. Best practices exist but need to be shared more effectively to accelerate progress and deliver equitable results for people with diabetes. publishedVersion
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- 2021
6. Analysing Intercellular Communication in Astrocytic Networks Using 'Astral'
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Dzyubenko, Egor, Prazuch, Wojciech, Pillath-Eilers, Matthias, Polanska, Joanna, and Hermann, Dirk M.
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astrocyte-neuron interactions ,calcium imaging ,glia ,Medizinische Fakultät » Universitätsklinikum Essen » Klinik für Neurologie ,data analysis ,Medizin ,Neurosciences. Biological psychiatry. Neuropsychiatry ,Technology and Code ,ddc:610 ,network coupling ,RC321-571 ,Neuroscience - Abstract
Astrocytic networks are critically involved in regulating the activity of neuronal networks. However, a comprehensive and ready-to-use data analysis tool for investigating functional interactions between the astrocytes is missing. We developed the novel software package named “Astral” to analyse intercellular communication in astrocytic networks based on live-cell calcium imaging. Our method for analysing calcium imaging data does not require the assignment of regions of interest. The package contains two applications: the core processing pipeline for detecting and quantifying Ca++ events, and the auxiliary visualization tool for controlling data quality. Our method allows for the network-wide quantification of Ca++ events and the analysis of their intercellular propagation. In a set of proof-of-concept experiments, we examined Ca++ events in flat monolayers of primary astrocytes and confirmed that inter-astrocytic interactions depend on the permeability of gap junctions and connexin hemichannels. The Astral tool is particularly useful for studying astrocyte-neuronal interactions on the network level. We demonstrate that compared with purely astrocytic cultures, spontaneous generation of Ca++ events in astrocytes that were co-cultivated with neurons was significantly increased. Interestingly, the increased astrocytic Ca++ activity after long-term co-cultivation with neurons was driven by the enhanced formation of gap junctions and connexin hemichannels but was not affected by silencing neuronal activity. Our data indicate the necessity for systematic investigation of astrocyte-neuronal interactions at the network level. For this purpose, the Astral software offers a powerful tool for processing and quantifying calcium imaging data.
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- 2021
7. Classification supporting COVID-19 diagnostics based on patient survey data
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Henzel, Joanna, Tobiasz, Joanna, Kozielski, Michał, Bach, Małgorzata, Foszner, Paweł, Gruca, Aleksandra, Kania, Mateusz, Mika, Justyna, Papiez, Anna, Werner, Aleksandra, Zyla, Joanna, Jaroszewicz, Jerzy, Polanska, Joanna, and Sikora, Marek
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Applications (stat.AP) ,Statistics - Applications ,Machine Learning (cs.LG) - Abstract
Distinguishing COVID-19 from other flu-like illnesses can be difficult due to ambiguous symptoms and still an initial experience of doctors. Whereas, it is crucial to filter out those sick patients who do not need to be tested for SARS-CoV-2 infection, especially in the event of the overwhelming increase in disease. As a part of the presented research, logistic regression and XGBoost classifiers, that allow for effective screening of patients for COVID-19, were generated. Each of the methods was tuned to achieve an assumed acceptable threshold of negative predictive values during classification. Additionally, an explanation of the obtained classification models was presented. The explanation enables the users to understand what was the basis of the decision made by the model. The obtained classification models provided the basis for the DECODE service (decode.polsl.pl), which can serve as support in screening patients with COVID-19 disease. Moreover, the data set constituting the basis for the analyses performed is made available to the research community. This data set consisting of more than 3,000 examples is based on questionnaires collected at a hospital in Poland., 39 pages, 5 figures
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- 2020
8. Classification of Thyroid Tumors Based on Mass Spectrometry Imaging of Tissue Microarrays
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Kurczyk, Agata, Gawin, Marta, Chekan, Mykola, Wilk, Agata, Łakomiec, Krzysztof, Mrukwa, Grzegorz, Frątczak, Katarzyna, Polanska, Joanna, Fujarewicz, Krzysztof, Pietrowska, Monika, and Widlak, Piotr
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endocrine system ,proteomics ,endocrine system diseases ,molecular classifiers ,thyroid cancer ,biomarkers ,bioinformatics ,mass spectrometry imaging ,molecular imaging - Abstract
The primary diagnosis of thyroid tumors based on histopathological patterns can be ambiguous in some cases, so proper classification of thyroid diseases might be improved if molecular biomarkers support cytological and histological assessment. In this work, tissue microarrays representative for major types of thyroid malignancies&mdash, papillary thyroid cancer (classical and follicular variant), follicular thyroid cancer, anaplastic thyroid cancer, and medullary thyroid cancer&mdash, and benign thyroid follicular adenoma and normal thyroid were analyzed by mass spectrometry imaging (MSI), and then different computation approaches were implemented to test the suitability of the registered profiles of tryptic peptides for tumor classification. Molecular similarity among all seven types of thyroid specimens was estimated, and multicomponent classifiers were built for sample classification using individual MSI spectra that corresponded to small clusters of cells. Moreover, MSI components showing the most significant differences in abundance between the compared types of tissues detected and their putative identity were established by annotation with fragments of proteins identified by liquid chromatography-tandem mass spectrometry in corresponding tissue lysates. In general, high accuracy of sample classification was associated with low inter-tissue similarity index and a high number of components with significant differences in abundance between the tissues. Particularly, high molecular similarity was noted between three types of tumors with follicular morphology (adenoma, follicular cancer, and follicular variant of papillary cancer), whose differentiation represented the major classification problem in our dataset. However, low level of the intra-tissue heterogeneity increased the accuracy of classification despite high inter-tissue similarity (which was exemplified by normal thyroid and benign adenoma). We compared classifiers based on all detected MSI components (n = 1536) and the subset of the most abundant components (n = 147). Despite relatively higher contribution of components with significantly different abundance and lower overall inter-tissue similarity in the latter case, the precision of classification was generally higher using all MSI components. Moreover, the classification model based on individual spectra (a single-pixel approach) outperformed the model based on mean spectra of tissue cores. Our result confirmed the high feasibility of MSI-based approaches to multi-class detection of cancer types and proved the good performance of sample classification based on individual spectra (molecular image pixels) that overcame problems related to small amounts of heterogeneous material, which limit the applicability of classical proteomics.
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- 2020
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9. Investigation of molecular heterogeneity of head and neck cancer in MALDI-MSI preparations
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Mrukwa, Grzegorz, Pietrowska, Monika, Widlak, Piotr, and Polanska, Joanna
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- 2017
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10. Initializing EM algorithm for univariate Gaussian, multi-component, heteroscedastic mixture models by dynamic programming partitions
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Polanski, Andrzej, Marczyk, Michal, Pietrowska, Monika, Widlak, Piotr, and Polanska, Joanna
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FOS: Computer and information sciences ,I.2.8 ,I.6.5 ,Applications (stat.AP) ,Statistics - Applications - Abstract
Setting initial values of parameters of mixture distributions estimated by using the EM recursive algorithm is very important to the overall quality of estimation. None of the existing methods is suitable for mixtures with large number of components. We present a relevant methodology of estimating initial values of parameters of univariate, heteroscedastic Gaussian mixtures, on the basis of the dynamic programming algorithm for partitioning the range of observations into bins. We evaluate variants of dynamic programming method corresponding to different scoring functions for partitioning. For simulated and real datasets we demonstrate superior efficiency of the proposed method compared to existing techniques., Comment: 21 pages, 2 figures
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- 2015
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11. Single nucleotide polymorphisms associated with papillary thyroid cancer
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Kowal Monika, Polanska Joanna, Tyszkiewicz Tomasz, Dorota Kula, Kalemba Michal, Puch Zbigniew, Handkiewicz-Junak Daria, Cyplinska Renata, Kowalska Malgorzata, and Jarzab Barbara
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business.industry ,medicine ,Cancer research ,Single-nucleotide polymorphism ,medicine.disease ,business ,Papillary thyroid cancer - Published
- 2014
12. NODE ASSIGNMENT PROBLEM IN BAYESIAN NETWORKS
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Polanska, Joanna, Damian Borys, and Polanski, Andrzej
13. Metastasis of mammary carcinoma to myocardium in a dog: Clinical and morphological correlation
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Marcin Nowak, Noszczyk-Nowak, Agnieszka, Slawuta, Piotr, Nowaczyk, Renata, and Polanska, Joanna
14. eNanny
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Rico Nieto, David, Kasprowski, Pawel, Rivero Espinosa, Jessica, Polanska, Joanna, Borrajo Millán, Daniel, Silesian University of Technology. Faculty of Automatic Control, Electronics and Computer Science, and Universidad Carlos III de Madrid. Departamento de Informática
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Informática ,Desarrollo Web ,Diseño de software - Abstract
El caso a resolver consiste en la realización de un portal web que permita la creación de contratos entre cuidadores/as y padres para el cuidado de sus hijos. Para ello se exige que en el portal web a crear sea posible que los padres puedan buscar cuidadores/as, contactar con ellos y también que los cuidadores/as puedan encontrar trabajo por ellos mismos/as. Como requisitos de desarrollo e implementación se exige la utilización de PHP para la creación de los scripts correspondientes al portal web, y MYSQL para la base de datos que albergará toda la información del sistema. Expondremos en primer lugar un enfoque teórico de la solución adoptada para resolver el caso a modo de análisis, es decir, podría corresponder a una fase de análisis. Posteriormente le seguirá las fases de diseño e implementación del portal, y por último un breve anexo de las funcionalidades más relevantes del sistema realizado. Ingeniería Técnica en Informática de Gestión
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- 2011
15. eNanny
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Rico Nieto, David, Kasprowski, Pawel, Rivero Espinosa, Jessica, Polanska, Joanna, Borrajo Millán, Daniel, Silesian University of Technology. Faculty of Automatic Control, Electronics and Computer Science, and Universidad Carlos III de Madrid. Departamento de Informática
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Informática ,Desarrollo Web ,Diseño de software - Abstract
El caso a resolver consiste en la realización de un portal web que permita la creación de contratos entre cuidadores/as y padres para el cuidado de sus hijos. Para ello se exige que en el portal web a crear sea posible que los padres puedan buscar cuidadores/as, contactar con ellos y también que los cuidadores/as puedan encontrar trabajo por ellos mismos/as. Como requisitos de desarrollo e implementación se exige la utilización de PHP para la creación de los scripts correspondientes al portal web, y MYSQL para la base de datos que albergará toda la información del sistema. Expondremos en primer lugar un enfoque teórico de la solución adoptada para resolver el caso a modo de análisis, es decir, podría corresponder a una fase de análisis. Posteriormente le seguirá las fases de diseño e implementación del portal, y por último un breve anexo de las funcionalidades más relevantes del sistema realizado. Ingeniería Técnica en Informática de Gestión
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- 2011
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