Literatura científica selecionada sobre o tema "Whole slide image classification"
Crie uma referência precisa em APA, MLA, Chicago, Harvard, e outros estilos
Índice
Consulte a lista de atuais artigos, livros, teses, anais de congressos e outras fontes científicas relevantes para o tema "Whole slide image classification".
Ao lado de cada fonte na lista de referências, há um botão "Adicionar à bibliografia". Clique e geraremos automaticamente a citação bibliográfica do trabalho escolhido no estilo de citação de que você precisa: APA, MLA, Harvard, Chicago, Vancouver, etc.
Você também pode baixar o texto completo da publicação científica em formato .pdf e ler o resumo do trabalho online se estiver presente nos metadados.
Artigos de revistas sobre o assunto "Whole slide image classification"
Feng, Ming, Kele Xu, Nanhui Wu, Weiquan Huang, Yan Bai, Yin Wang, Changjian Wang e Huaimin Wang. "Trusted multi-scale classification framework for whole slide image". Biomedical Signal Processing and Control 89 (março de 2024): 105790. http://dx.doi.org/10.1016/j.bspc.2023.105790.
Texto completo da fonteFridman, M. V., A. A. Kosareva, E. V. Snezhko, P. V. Kamlach e V. A. Kovalev. "Papillary thyroid carcinoma whole-slide images as a basis for deep learning". Informatics 20, n.º 2 (29 de junho de 2023): 28–38. http://dx.doi.org/10.37661/1816-0301-2023-20-2-28-38.
Texto completo da fonteZarella, Mark D., Matthew R. Quaschnick;, David E. Breen e Fernando U. Garcia. "Estimation of Fine-Scale Histologic Features at Low Magnification". Archives of Pathology & Laboratory Medicine 142, n.º 11 (18 de junho de 2018): 1394–402. http://dx.doi.org/10.5858/arpa.2017-0380-oa.
Texto completo da fonteChen, Kaitao, Shiliang Sun e Jing Zhao. "CaMIL: Causal Multiple Instance Learning for Whole Slide Image Classification". Proceedings of the AAAI Conference on Artificial Intelligence 38, n.º 2 (24 de março de 2024): 1120–28. http://dx.doi.org/10.1609/aaai.v38i2.27873.
Texto completo da fonteLewis, Joshua, Conrad Shebelut, Bradley Drumheller, Xuebao Zhang, Nithya Shanmugam, Michel Attieh, Michael Horwath, Anurag Khanna, Geoffrey Smith e David Gutman. "An Automated Pipeline for Cell Differentials on Whole-Slide Bone Marrow Aspirate Smears". American Journal of Clinical Pathology 158, Supplement_1 (1 de novembro de 2022): S12. http://dx.doi.org/10.1093/ajcp/aqac126.020.
Texto completo da fonteAhmed, Shakil, Asadullah Shaikh, Hani Alshahrani, Abdullah Alghamdi, Mesfer Alrizq, Junaid Baber e Maheen Bakhtyar. "Transfer Learning Approach for Classification of Histopathology Whole Slide Images". Sensors 21, n.º 16 (9 de agosto de 2021): 5361. http://dx.doi.org/10.3390/s21165361.
Texto completo da fonteFranklin, Daniel L., Tara Pattilachan e Anthony Magliocco. "Abstract 5048: Imaging based EGFR mutation subtype classification using EfficientNet". Cancer Research 82, n.º 12_Supplement (15 de junho de 2022): 5048. http://dx.doi.org/10.1158/1538-7445.am2022-5048.
Texto completo da fonteJansen, Philipp, Adelaida Creosteanu, Viktor Matyas, Amrei Dilling, Ana Pina, Andrea Saggini, Tobias Schimming et al. "Deep Learning Assisted Diagnosis of Onychomycosis on Whole-Slide Images". Journal of Fungi 8, n.º 9 (28 de agosto de 2022): 912. http://dx.doi.org/10.3390/jof8090912.
Texto completo da fonteAmgad, Mohamed, Habiba Elfandy, Hagar Hussein, Lamees A. Atteya, Mai A. T. Elsebaie, Lamia S. Abo Elnasr, Rokia A. Sakr et al. "Structured crowdsourcing enables convolutional segmentation of histology images". Bioinformatics 35, n.º 18 (6 de fevereiro de 2019): 3461–67. http://dx.doi.org/10.1093/bioinformatics/btz083.
Texto completo da fonteWang, Qian, Ying Zou, Jianxin Zhang e Bin Liu. "Second-order multi-instance learning model for whole slide image classification". Physics in Medicine & Biology 66, n.º 14 (12 de julho de 2021): 145006. http://dx.doi.org/10.1088/1361-6560/ac0f30.
Texto completo da fonteTeses / dissertações sobre o assunto "Whole slide image classification"
Lerousseau, Marvin. "Weakly Supervised Segmentation and Context-Aware Classification in Computational Pathology". Electronic Thesis or Diss., université Paris-Saclay, 2022. http://www.theses.fr/2022UPASG015.
Texto completo da fonteAnatomic pathology is the medical discipline responsible for the diagnosis and characterization of diseases through the macroscopic, microscopic, molecular and immunologic inspection of tissues. Modern technologies have made possible the digitization of tissue glass slides into whole slide images, which can themselves be processed by artificial intelligence to enhance the capabilities of pathologists. This thesis presented several novel and powerful approaches that tackle pan-cancer segmentation and classification of whole slide images. Learning segmentation models for whole slide images is challenged by an annotation bottleneck which arises from (i) a shortage of pathologists, (ii) an intense cumbersomeness and boring annotation process, and (iii) major inter-annotators discrepancy. My first line of work tackled pan-cancer tumor segmentation by designing two novel state-of-the-art weakly supervised approaches that exploit slide-level annotations that are fast and easy to obtain. In particular, my second segmentation contribution was a generic and highly powerful algorithm that leverages percentage annotations on a slide basis, without needing any pixelbased annotation. Extensive large-scale experiments showed the superiority of my approaches over weakly supervised and supervised methods for pan-cancer tumor segmentation on a dataset of more than 15,000 unfiltered and extremely challenging whole slide images from snap-frozen tissues. My results indicated the robustness of my approaches to noise and systemic biases in annotations. Digital slides are difficult to classify due to their colossal sizes, which range from millions of pixels to billions of pixels, often weighing more than 500 megabytes. The straightforward use of traditional computer vision is therefore not possible, prompting the use of multiple instance learning, a machine learning paradigm consisting in assimilating a whole slide image as a set of patches uniformly sampled from it. Up to my works, the greater majority of multiple instance learning approaches considered patches as independently and identically sampled, i.e. discarded the spatial relationship of patches extracted from a whole slide image. Some approaches exploited such spatial interconnection by leveraging graph-based models, although the true domain of whole slide images is specifically the image domain which is more suited with convolutional neural networks. I designed a highly powerful and modular multiple instance learning framework that leverages the spatial relationship of patches extracted from a whole slide image by building a sparse map from the patches embeddings, which is then further processed into a whole slide image embedding by a sparse-input convolutional neural network, before being classified by a generic classifier model. My framework essentially bridges the gap between multiple instance learning, and fully convolutional classification. I performed extensive experiments on three whole slide image classification tasks, including the golden task of cancer pathologist of subtyping tumors, on a dataset of more than 20,000 whole slide images from public data. Results highlighted the superiority of my approach over all other widespread multiple instance learning methods. Furthermore, while my experiments only investigated my approach with sparse-input convolutional neural networks with two convolutional layers, the results showed that my framework works better as the number of parameters increases, suggesting that more sophisticated convolutional neural networks can easily obtain superior results
Zaidi, Fatima. "Deep learning-based scale-invariant cancer detection from whole slide image". Thesis, Zaidi, Fatima (2021) Deep learning-based scale-invariant cancer detection from whole slide image. Masters by Research thesis, Murdoch University, 2021. https://researchrepository.murdoch.edu.au/id/eprint/63326/.
Texto completo da fonteДяченко, Є. В. "Інформаційна технологія розпізнавання онкопатологій на повнослайдових гістологічних зображеннях". Master's thesis, Сумський державний університет, 2020. https://essuir.sumdu.edu.ua/handle/123456789/78594.
Texto completo da fonteRydell, Christopher. "Deep Learning for Whole Slide Image Cytology : A Human-in-the-Loop Approach". Thesis, Uppsala universitet, Institutionen för informationsteknologi, 2021. http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-450356.
Texto completo da fonteWilliams, Paul James. "Near infrared (NIR) hyperspectral imaging for evaluation of whole maize kernels: chemometrics for exploration and classification". Thesis, Stellenbosch : University of Stellenbosch, 2009. http://hdl.handle.net/10019.1/1696.
Texto completo da fonteThe use of near infrared (NIR) hyperspectral imaging and hyperspectral image analysis for distinguishing between whole maize kernels of varying degrees of hardness and fungal infected and non-infected kernels have been investigated. Near infrared hyperspectral images of whole maize kernels of varying degrees of hardness were acquired using a Spectral Dimensions MatrixNIR camera with a spectral range of 960-1662 nm as well as a sisuChema SWIR (short wave infrared) hyperspectral pushbroom imaging system with a spectral range of 1000-2498 nm. Exploratory principal component analysis (PCA) on absorbance images was used to remove background, bad pixels and shading. On the cleaned images, PCA could be used effectively to find histological classes including glassy (hard) and floury (soft) endosperm. PCA illustrated a distinct difference between floury and glassy endosperm along principal component (PC) three. Interpreting the PC loading line plots important absorbance peaks responsible for the variation were 1215, 1395 and 1450 nm, associated with starch and moisture for both MatrixNIR images (12 and 24 kernels). The loading line plots for the sisuChema (24 kernels) illustrated peaks of importance at the aforementioned wavelengths as well as 1695, 1900 and 1940 nm, also associated with starch and moisture. Partial least squares-discriminant analysis (PLS-DA) was applied as a means to predict whether the different endosperm types observed, were glassy or floury. For the MatrixNIR image (12 kernels), the PLS-DA model exhibited a classification rate of up to 99% for the discrimination of both floury and glassy endosperm. The PLS-DA model for the second MatrixNIR image (24 kernels) yielded a classification rate of 82% for the discrimination of glassy and 73% for floury endosperm. The sisuChema image (24 kernels) yielded a classification rate of 95% for the discrimination of floury and 92% for glassy endosperm. The fungal infected and sound whole maize kernels were imaged using the same instruments. Background, bad pixels and shading were removed by applying PCA on absorbance images. On the cleaned images, PCA could be used effectively to find the infected regions, pedicle as well as non-infected regions. A distinct difference between infected and sound kernels was illustrated along PC1. Interpreting the PC loading line plots showed important absorbance peaks responsible for the variation and predominantly associated with starch and moisture: 1215, 1450, 1480, 1690, 1940 and 2136 nm for both MatrixNIR images (15 and 21 kernels). The MatrixNIR image (15 kernels) exhibited a PLS-DA classification rate of up to 96.1% for the discrimination of infected kernels and the sisuChema had a classification rate of 99% for the same region of interest. The The iv sisuChema image (21-kernels) had a classification rate for infected kernels of 97.6% without pre-processing, 97.7% with multiplicative scatter correction (MSC) and 97.4% with standard normal variate (SNV). Near infrared hyperspectral imaging is a promising technique, capable of distinguishing between maize kernels of varying hardness and between fungal infected and sound kernels. While there are still limitations with hardware and software, these results provide the platform which would greatly assist with the determination of maize kernel hardness in breeding programmes without having to destroy the kernel. Further, NIR hyperspectral imaging could serve as an objective, rapid tool for identification of fungal infected kernels.
Khire, Sourabh Mohan. "Time-sensitive communication of digital images, with applications in telepathology". Thesis, Atlanta, Ga. : Georgia Institute of Technology, 2009. http://hdl.handle.net/1853/29761.
Texto completo da fonteCommittee Chair: Jayant, Nikil; Committee Member: Anderson, David; Committee Member: Lee, Chin-Hui. Part of the SMARTech Electronic Thesis and Dissertation Collection.
Venâncio, Rui Miguel Morgado. "Micrometastasis detection guidance by whole-slide image texture analysis in colorectal lymph nodes correlated with QUS parameters". Master's thesis, 2016. http://hdl.handle.net/10316/32150.
Texto completo da fonteO cancro ´e uma doen¸ca que afeta milh˜oes por todo o mundo e uma identifica¸c˜ao correta de gˆanglios linf´aticos pr´oximos do tumor prim´ario, que contenham regi˜oes metast´aticas ´e de extrema importˆancia para um correto gerenciamento dos pacientes. A avalia¸c˜ao histopatol´ogica ´e o ´unico m´etodo aceite para fazer essa identifica¸c˜ao. Novas t´ecnicas emergentes como os ultrassons quantitativos podem ajudar nessa identifica¸c˜ao, detetando regi˜oes metast´aticas no gˆanglio linf´atico antes mesmo de o cortar. Propomos e avaliamos dois m´etodos para analisar e identificar automaticamente regi˜oes suspeitas que contenham met´astases em lˆaminas histopatol´ogicas digitalizadas em alta resolu¸c˜ao, guiando o patologista em dire¸c˜ao `as regi˜oes suspeitas e classificando os gˆanglios como metast´aticos ou n˜ao-metast´aticos. O primeiro m´etodo, ´e um m´etodo convencional de an´alise de texturas e o segundo ´e baseado na aprendizagem profunda. Utilizando o m´etodo mais convencional particip´amos numa competi¸c˜ao europeia chamada CAMELYON16. Esta competi¸c˜ao tinha duas avalia¸c˜oes. Os m´etodos de textura utilizados foram as matrizes de coocorrˆencia de n´ıveis de cinzento e medidas de energia de texturas de Laws. Os parˆametros de textura ser˜ao utilizados para tentar encontrar rela¸c˜oes entre os ultrassons quantitativos e a histopatologia. Para a aprendizagem profunda utilizamos uma rede bem documentada chamada VGG16. Imagens digitalizadas de lˆaminas histol´ogicas de 44 gˆanglios foram utilizadas. Para avaliar os m´etodos foram desenhadas curvas ROC e F-Scores s˜ao calculados. Como resultados, obtivemos uma ´area sob a curva de 0.986 e um F-Score de 91.67 para o m´etodo mais convencional. Para a aprendizagem profunda obtivemos uma ´area sob a curva e um F-score igual a 1.0. Na competi¸c˜ao fic´amos em ´ultimo numa avalia¸c˜ao e em pen´ultimo na outra. Para finalizar, n˜ao foi poss´ıvel encontrar nenhuma correla¸c˜ao entre os ultrassons e a histologia.
Cancer is a disease that affects millions worldwide and accurate determination of whether lymph nodes (LNs) near the primary tumor contain metastatic foci is of critical importance for proper patient management. Histopathological evaluation is the only accepted method to make that determination. New emerging techniques like quantitative ultrasound (QUS) may help in the determination by detect metastatic regions in the LN before cutting it. We propose and evaluate two methods to automatically analyze and identify suspicious regions for metastatic foci in highresolution digitized histopathological slides (whole-slide images (WSI)) to helping the guidance of the pathologist towards cancer-suspicious regions and to classify LNs as metastatic or non-metastatic. The first method is a conventional texture-based method and the second one is based in deep convolutional neural networks (DCNNs). We have participated in the CAMELYON16 challenge with the conventional method. The texture methods used are based on gray-level co-occurrence matrices (GLCM) and Laws’ energy texture measures, which parameters will be used for find correlations with the QUS. As DCNN we used a known network called VGG16. Whole slide images (WSIs) of 44 lymph nodes (LNs) were used. For evaluate both methods Receiver Operating Characteristic (ROC) curves were drawn. For the most conventional method we obtained an Area Under the Curve (AUC) of 0.986 and a F-Score of 91.67. For the CNN based method we obtained an AUC and a F-Score of 1.0. The challenge had 2 evaluations, and we came last in one and second-to-last in the second. We could not find any correlation between the ultrasounds and the histology.
Rosenbloom, Raymond. "Multiplex immunohistochemical analysis of granulomatous inflammation in lung tissue sections using a mouse model of M. avium infection". Thesis, 2020. https://hdl.handle.net/2144/41719.
Texto completo da fonteDonner, Ralf. "Die visuelle Interpretation von Fernerkundungsdaten". Doctoral thesis, 2007. https://tubaf.qucosa.de/id/qucosa%3A22626.
Texto completo da fonteLivros sobre o assunto "Whole slide image classification"
Karapapa, Stavroula. Defences to Copyright Infringement. Oxford University Press, 2020. http://dx.doi.org/10.1093/oso/9780198795636.001.0001.
Texto completo da fonteCapítulos de livros sobre o assunto "Whole slide image classification"
Rymarczyk, Dawid, Adam Pardyl, Jarosław Kraus, Aneta Kaczyńska, Marek Skomorowski e Bartosz Zieliński. "ProtoMIL: Multiple Instance Learning with Prototypical Parts for Whole-Slide Image Classification". In Machine Learning and Knowledge Discovery in Databases, 421–36. Cham: Springer International Publishing, 2023. http://dx.doi.org/10.1007/978-3-031-26387-3_26.
Texto completo da fonteLi, Jiahui, Wen Chen, Xiaodi Huang, Shuang Yang, Zhiqiang Hu, Qi Duan, Dimitris N. Metaxas, Hongsheng Li e Shaoting Zhang. "Hybrid Supervision Learning for Pathology Whole Slide Image Classification". In Medical Image Computing and Computer Assisted Intervention – MICCAI 2021, 309–18. Cham: Springer International Publishing, 2021. http://dx.doi.org/10.1007/978-3-030-87237-3_30.
Texto completo da fonteDing, Saisai, Jun Wang, Juncheng Li e Jun Shi. "Multi-scale Prototypical Transformer for Whole Slide Image Classification". In Lecture Notes in Computer Science, 602–11. Cham: Springer Nature Switzerland, 2023. http://dx.doi.org/10.1007/978-3-031-43987-2_58.
Texto completo da fonteShen, Yiqing, e Jing Ke. "A Deformable CRF Model for Histopathology Whole-Slide Image Classification". In Medical Image Computing and Computer Assisted Intervention – MICCAI 2020, 500–508. Cham: Springer International Publishing, 2020. http://dx.doi.org/10.1007/978-3-030-59722-1_48.
Texto completo da fonteZheng, Yushan, Jun Li, Jun Shi, Fengying Xie e Zhiguo Jiang. "Kernel Attention Transformer (KAT) for Histopathology Whole Slide Image Classification". In Lecture Notes in Computer Science, 283–92. Cham: Springer Nature Switzerland, 2022. http://dx.doi.org/10.1007/978-3-031-16434-7_28.
Texto completo da fonteGavade, Anil B., Rajendra B. Nerli, Shridhar Ghagane, Priyanka A. Gavade e Venkata Siva Prasad Bhagavatula. "Cancer Cell Detection and Classification from Digital Whole Slide Image". In Smart Technologies in Data Science and Communication, 289–99. Singapore: Springer Nature Singapore, 2023. http://dx.doi.org/10.1007/978-981-19-6880-8_31.
Texto completo da fonteApou, Grégory, Benoît Naegel, Germain Forestier, Friedrich Feuerhake e Cédric Wemmert. "Efficient Region-based Classification for Whole Slide Images". In Communications in Computer and Information Science, 239–56. Cham: Springer International Publishing, 2015. http://dx.doi.org/10.1007/978-3-319-25117-2_15.
Texto completo da fonteRen, Jian, Ilker Hacihaliloglu, Eric A. Singer, David J. Foran e Xin Qi. "Adversarial Domain Adaptation for Classification of Prostate Histopathology Whole-Slide Images". In Medical Image Computing and Computer Assisted Intervention – MICCAI 2018, 201–9. Cham: Springer International Publishing, 2018. http://dx.doi.org/10.1007/978-3-030-00934-2_23.
Texto completo da fonteQu, Linhao, Xiaoyuan Luo, Shaolei Liu, Manning Wang e Zhijian Song. "DGMIL: Distribution Guided Multiple Instance Learning for Whole Slide Image Classification". In Lecture Notes in Computer Science, 24–34. Cham: Springer Nature Switzerland, 2022. http://dx.doi.org/10.1007/978-3-031-16434-7_3.
Texto completo da fonteWu, Wei, Zhonghang Zhu, Baptiste Magnier e Liansheng Wang. "Clustering-Based Multi-instance Learning Network for Whole Slide Image Classification". In Computational Mathematics Modeling in Cancer Analysis, 100–109. Cham: Springer Nature Switzerland, 2022. http://dx.doi.org/10.1007/978-3-031-17266-3_10.
Texto completo da fonteTrabalhos de conferências sobre o assunto "Whole slide image classification"
Zhang, Chaoyi, Yang Song, Donghao Zhang, Sidong Liu, Mei Chen e Weidong Cai. "Whole Slide Image Classification via Iterative Patch Labelling". In 2018 25th IEEE International Conference on Image Processing (ICIP). IEEE, 2018. http://dx.doi.org/10.1109/icip.2018.8451551.
Texto completo da fonteAkbarnejad, Amir, Nilanjan Ray e Gilbert Bigras. "Deep Fisher Vector Coding For Whole Slide Image Classification". In 2021 IEEE 18th International Symposium on Biomedical Imaging (ISBI). IEEE, 2021. http://dx.doi.org/10.1109/isbi48211.2021.9433836.
Texto completo da fontePoudel, Sahadev, e Sang-Woong Lee. "Whole Slide Image Classification and Segmentation using Deep Learning". In ACM ICEA '20: 2020 ACM International Conference on Intelligent Computing and its Emerging Applications. New York, NY, USA: ACM, 2020. http://dx.doi.org/10.1145/3440943.3444357.
Texto completo da fonteZhou, Yuanpin, e Yao Lu. "Deep Hierarchical Multiple Instance Learning for Whole Slide Image Classification". In 2022 IEEE 19th International Symposium on Biomedical Imaging (ISBI). IEEE, 2022. http://dx.doi.org/10.1109/isbi52829.2022.9761678.
Texto completo da fonteZhou, Yuanpin, e Yao Lu. "Deep Hierarchical Multiple Instance Learning for Whole Slide Image Classification". In 2022 IEEE 19th International Symposium on Biomedical Imaging (ISBI). IEEE, 2022. http://dx.doi.org/10.1109/isbi52829.2022.9761678.
Texto completo da fonteZhou, Yuanpin, e Yao Lu. "Deep Hierarchical Multiple Instance Learning for Whole Slide Image Classification". In 2022 IEEE 19th International Symposium on Biomedical Imaging (ISBI). IEEE, 2022. http://dx.doi.org/10.1109/isbi52829.2022.9761678.
Texto completo da fonteMaksoud, Sam, Kun Zhao, Peter Hobson, Anthony Jennings e Brian C. Lovell. "SOS: Selective Objective Switch for Rapid Immunofluorescence Whole Slide Image Classification". In 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). IEEE, 2020. http://dx.doi.org/10.1109/cvpr42600.2020.00392.
Texto completo da fonteHou, Le, Dimitris Samaras, Tahsin M. Kurc, Yi Gao, James E. Davis e Joel H. Saltz. "Patch-Based Convolutional Neural Network for Whole Slide Tissue Image Classification". In 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). IEEE, 2016. http://dx.doi.org/10.1109/cvpr.2016.266.
Texto completo da fonteYe, Zehua, Yonghong He e Tian Guan. "Semantic-Similarity Collaborative Knowledge Distillation Framework for Whole Slide Image Classification". In 2023 IEEE International Conference on Bioinformatics and Biomedicine (BIBM). IEEE, 2023. http://dx.doi.org/10.1109/bibm58861.2023.10385681.
Texto completo da fonteSong, Hongjian, Jie Tang, Hongzhao Xiao e Juncheng Hu. "Rethinking Overfitting of Multiple Instance Learning for Whole Slide Image Classification". In 2023 IEEE International Conference on Multimedia and Expo (ICME). IEEE, 2023. http://dx.doi.org/10.1109/icme55011.2023.00100.
Texto completo da fonte