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Publications

2021

  • R. Verma, N. Kumar, A. Patil, N. C. Kurian, S. Rane, S. Graham, Q. Dang Vu, M. Zwager, S. E. A. Raza, N. Rajpoot, X. Wu, H. Chen, Y. Huang, L. Wang, H. Jung, G. T. Brown, Y. Liu, S. Liu, S. A. F. Jahromi, A. A. Khani, E. Montahaei, M. S. Baghshah, H. Behroozi, P. Semkin, A. Rassadin, P. Dutande, R. Lodaya, U. Baid, B. Baheti, S. Talbar, A. Mahbod, R. Ecker, I. Ellinger, Z. Luo, B. Dong, Z. Xu, Y. Yao, S Lv, M. Feng, K. Xu, H. Zunair, A. B. Hamza, S. Smiley, T.-K. Yin, Q. Fang, S. Srivastava, D. Mahapatra, L. Trnavska, H. Zhang, P. L. Narayanan, J. Law, Y. Yuan, A. Tejomay, A. Mitkari, D. Koka, V. Ramachandra, L. Kini & A. Sethi, 鈥淢oNuSAC2020: A Multi-organ Nuclei Segmentation and Classification Challenge鈥 IEEE Transactions on Medical Imaging, June 2021. [Abstract]
  • Q. Dang Vu, C. Fong, K. von Loga, S. E. A. Raza, D. N. Rodrigues, B. Patel, C. Peckitt, R. Begum, A. Athauda, N. Starling, I. Chau, S. Rao, D. J. Watkins, M. Rebelatto, T. Waddell, J. Wadsley, T. Roques, M. Hewish, D. Cunningham & N. M. Rajpoot, 鈥淒igital histological markers based on routine H\&E slides to predict benefit from maintenance immunotherapy in esophagogastric adenocarcinoma.鈥 Journal of Clinical Oncology, 39(15\_suppl), 2021, e16074-e16074. [Abstract]
  • P. L. Narayanan, S. E. A. Raza, A. H. Hall, J. R. Marks, L. King, R. B. West, L. Hernandez, N. Guppy, M. Dowsett, B. Gusterson, C. Maley, E. S. Hwang & Y. Yuan, 鈥淯nmasking the immune microecology of ductal carcinoma in situ with deep learning,鈥 NPJ Breast Cancer, 7(19), Mar 2021. [Abstract]
  • J. M. Winfield, J. C. Wakefield, J. D. Brenton, K. AbdulJabbar, A. Savio, S. Freeman, E. Pace, K. Lutchman-Singh, K. M. Vroobel, Y. Yuan, S. Banerjee, N. Porta, S. E. A. Raza & N. M. deSouza, 鈥淏iomarkers for site-specific response to neoadjuvant chemotherapy in epithelial ovarian cancer: relating MRI changes to tumour cell load and necrosis,鈥 British Journal of Cancer, Jan 2021. [Abstract]

2020

  • A. Pennycuick, V. H Teixeira, K. AbdulJabbar, S. E. A. Raza, T. Lund, A. U. Akarca, R. Rosenthal, L. Kalinke, D. P. Chandrasekharan, C. P. Pipinikas, H. Lee-Six, R. E. Hynds, K. H.C. Gowers, J. Y Henry, F. R. Millar, Y. B Hagos, C. Denais, M. Falzon, D. A Moore, S. Antoniou, P. F. Durrenberger, A. J. S. Furness, B. Carroll, C. Marceaux, M.e Asselin-Labat, W. Larson, C. Betts, L. M. Coussens, R. M. Thakrar, J. George, C. Swanton, C. Thirlwell, P. J. Campbell, T. Marafioti, Y. Yuan, S. A. Quezada, N. McGranahan, S. M. Janes, 鈥淚mmune surveillance in clinical regression of pre-invasive squamous cell lung cancer,鈥 Cancer Discovery, July 2020. [Abstract]
  • K. AbdulJabbar*, S. E. A. Raza*, R. Rosenthal, M. Jamal-Hanjani, S. Veeriah, A. Akarca, T. Lund, D. Moore, R. Salgado, M. Al Bakir, L. Zapata, C. Hiley, L. Officer, M. Sereno, C. Smith, S. Loi, A. Hackshaw, T. Marafioti, S. Quezada, N. McGranahan, J. Le Quesne, C. Swanton & Y. Yuan, 鈥淕eospatial immune variability illuminates differential evolution of lung adenocarcinoma,鈥 Nature Medicine, May 2020, p. 1-9. [Abstract]
  • R. M. S. Bashir, T. Qaiser, S. E. A. Raza, & N. M. Rajpoot, 鈥淗ydraMix-Net: A Deep Multi-task Semi-supervised Learning Approach for Cell Detection and Classification,鈥 in Interpretable and Annotation-Efficient Learning for Medical Image Computing. IMIMIC 2020, MIL3ID 2020. [Abstract] 
  • A. Yaar, A. Asif, S. E. A. Raza, N.M. Rajpoot & F. Minhas, 鈥淐ross-Domain Knowledge Transfer for Prediction of Chemosensitivity in Ovarian Cancer Patients,鈥 in Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops 2020 USA. [Abstract] 
  • R. M. S. Bashir, H. Mahmood, M. Shaban, S. E. A. Raza, M. M. Fraz, S. A. Khurram & N. M. Rajpoot, 鈥淎utomated grade classification of oral epithelial dysplasia using morphometric analysis of histology images,鈥 in Medical Imaging 2020: Digital Pathology, Houston, Texas, USA, vol. 11320, p. 1132011. [Abstract] 

2019

  • S. Graham, Q. Dang, S. E. A. Raza, J.T. Kwak, N.M. Rajpoot, 鈥淗over-Net: Simultaneous segmentation and classification of nuclei in multi-tissue histology images,鈥 Medical Image Analysis, Dec. 2019, vol. 58, p. 101563. [Abstract] [Data]
  • H. M. Alghamdi, M. Althobiti, T. Qaiser, A. R. Green, S. E. A. Raza, E. A. Rakha & N. M. Rajpoot, 鈥淎 Hybrid Pipeline to Assess Oestrogen Receptor Stained Nuclei in Invasive Breast Cancer,鈥 in COMPAY 2019: MICCAI, Shenzhen, China [Abstract] 
  • K. Zormpas-Petridis, H. Failmezger, S. E. A. Raza, et al., 鈥淪uperpixel-based Conditional Random Fields (SuperCRF): Incorporating global and local context for enhanced deep learning in melanoma histopathology,鈥 Frontiers in Oncology, Sep. 2019. [Abstract]
  • S. E. A. Raza, K. AbdulJabbar, M. Jamal-Hanjani, et al., 鈥淒econvolving convolution neural network for cell detection,鈥 IEEE International Symposium on Biomedical Imaging (ISBI), Apr. 2019, p. 891–894. [Abstract] 

2018

  • S. E. A. Raza, L. Cheung, M. Shaban, et al., 鈥淢icro-Net: A unified model for segmentation of various objects in microscopy images,鈥 Medical Image Analysis, Dec. 2018, vol. 52, p. 160–173. [Abstract]  [Data]
  • P. L. Narayanan, S. E. A. Raza, A. Dodson, et al., 鈥淒eepSDCS: Dissecting cancer proliferation heterogeneity in Ki67 digital whole slide images,鈥 in Medical Imaging with Deep Learning (MIDL) , 2018 [Abstract] 
  • N. Alsubaie, K. Sirinukunwattana, S. E. A. Raza, et al., 鈥淎 bottom-up approach for tumour differentiation in whole slide images of lung adenocarcinoma,鈥 in Medical Imaging : Digital Pathology, Mar. 2018, pp. 105810E, vol. 10581. [Abstract] 

2017

  • S. E. A. Raza, L. Cheung, D. Epstein, et al., 鈥淢imonet: Gland segmentation using multi-input-multi-output convolutional neural network,鈥 In Medical Image Understanding and Analysis (MIUA), Jul. 2017, pp. 698–706. [Abstract] 
  • S. E. A. Raza, L. Cheung, D. Epstein, et al., 鈥淢IMO-Net: A multi-input multi-output convolutional neural network for cell segmentation in fluorescence microscopy images,鈥 IEEE International Symposium on Biomedical Imaging (ISBI), Apr. 2017, p. 337-340. [Abstract] 
  • G. Li, S.E.A. Raza, N.M. Rajpoot, 鈥淢ulti-Resolution Cell Orientation Congruence Descriptors for Epithelium Segmentation in Endometrial Histology Images,鈥 Medical Image Analysis, Jan. 2017, vol. 37, p. 91–100. [Abstract] 
  • N. Alsubaie, N. Trahearn, S.E.A. Raza et al., 鈥淪tain Deconvolution Using Statistical Analysis of Multi-Resolution Stain Colour Representation,鈥 PLoS One, Jan. 2017, vol. 12, no. 1, p.e0169875. [Abstract] 

2016

  • N. Alsubaie, S. E. A. Raza, and N. M. Rajpoot, 鈥淪tain Deconvoloution of Histology Images via Independent Component Analysis in the Wavelet Domain,鈥 IEEE International Symposium on Biomedical Imaging (ISBI), Apr. 2016, p. 803-806. [Abstract] 
  • M.N. Kashif, S.E.A. Raza, K. Sirinukunwattana, et al., 鈥淗andcrafted features with convolutional neural networks for detection of tumor cells in histology images,鈥 IEEE International Symposium on Biomedical Imaging (ISBI), Apr. 2016, p. 1029-1032. [Abstract] 
  • S. E. A. Raza, D. Langenk盲mper, K. Sirinukunwattana, D. B. A. Epstein, T. W. Nattkemper, and N. M. Rajpoot, 鈥淩obust Normalization Protocols for Multiplexed Fluorescence Bioimage Analysis,鈥 BMC Biodata Min., Mar. 2016, vol. 9:11. [Abstract] 
  • K. Sirinukunwattana, S.E.A. Raza, Y.-W. Tsang, D. Snead, I. Cree, and N.M. Rajpoot, 鈥淟ocality Sensitive Deep Learning for Detection and Classification of Nuclei in Routine Colon Cancer Histology Images,鈥 IEEE Trans. Med. Imaging, pp. 1–1, Jan. 2016. [Abstract] [] [Data]

2015

  • K. Sirinukunwattana, S. E. A.Raza, Y.-W. Tsang, D. Snead, I. Cree, and N.M. Rajpoot, 鈥淎 Spatially Constrained Deep Learning Framework for Detection of Epithelial Tumor Nuclei in Cancer Histology Images,鈥 in 1st International Workshop on Patch-based Techniques in Medical Imaging, MICCAI, Oct. 2015, pp. 154–162. [Abstract] 
  • G. Li, S. E. A. Raza, and N.M. Rajpoot, 鈥淎 Novel Cell Orientation Congruence Descriptor for Superpixel Based Epithelium Segmentation in Endometrial Histology Images,鈥 in 1st International Workshop on Patch-based Techniques in Medical Imaging, MICCAI, Oct. 2015, pp. 172–179. [Abstract] 
  • S.E.A. Raza, V. Sanchez, G. Prince, J. Clarkson, and N. M. Rajpoot, 鈥淩egistration of thermal and visible light images of diseased plants using silhouette extraction in the wavelet domain,鈥 Pattern Recognit., vol. 48, pp. 2119–2128, Jul. 2015. [Abstract] []
  • S. E. A. Raza and N. M. Rajpoot, 鈥淐ell Nuclei Segmentation in Variable Intensity Fluorescence Microscopy Images,鈥 in Medical Image Understanding and Analysis, Jul. 2015, pp. 28–33. [Abstract] 
  • N. Alsubaie, N. Trahearn, S. E. A. Raza, and N. M. Rajpoot, 鈥淎 Discriminative Framework for Stain Deconvolution of Histopathology Images in the Maxwellian Space,鈥 in Medical Image Understanding and Analysis, Jul. 2015, pp. 132–137. [Abstract] 
  • S. E. A. Raza, G. Prince, J. Clarkson, and N. M. Rajpoot, 鈥淎utomatic Detection of Diseased Tomato Plants using Thermal and Stereo Visible Light Images,鈥 PLoS One, Apr. 2015. [Abstract] 
  • S. E. A. Raza, M. Q. Marjan, M. Arif, F. Butt, F. Sultan, and N. M. Rajpoot, 鈥淎nisotropic tubular filtering for automatic detection of acid-fast bacilli in Ziehl-Neelsen stained sputum smear samples,鈥 in SPIE Medical Imaging, Feb. 2015, vol. 9420, p. 942005. [Abstract] 

2014

  • A.M. Khan, S.E.A. Raza, M. Khan, et al., 鈥淐ell Phenotyping in Multi-Tag Fluorescent Bioimages,鈥 Neurocomputing, Jun. 2014, vol. 134 no. 1 p. 254-261. [Abstract] 
  • S.E.A Raza, H. Smith, G.J.J. Clarkson, et al., 鈥淎utomatic Detection of Regions in Spinach Canopies Responding to Soil Moisture Deficit Using Combined Visible and Thermal Imagery,鈥 PLoS ONE, Jun. 2014, vol. 9 no. 6 p. e97612. [Abstract] 

2012

  • S.E.A. Raza, A. Humayun, S. Abouna, et al., 鈥淩AMTaB: Robust Alignment of Multi-Tag Bioimages,鈥 PLoS ONE, Feb. 2012, vol. 7 no. 2, p. e30894. [Abstract] 
  • A. M. Khan, A. Humayun, S. E. A. Raza, et al., 鈥淎 Novel Paradigm for Mining Cell Phenotypes in Multi-tag Bioimages Using a Locality Preserving Nonlinear Embedding,鈥 Proceedings Neural Information Processing. ICONIP, Lecture Notes in Computer Science , vol. 7666, 2012. [Abstract] 

2011

  • A. Humayun, S.E.A. Raza, C. Waddington, et al., 鈥淎 Framework for Molecular Co-Expression Pattern Analysis in Multi-Channel Toponome Fluorescence Images,鈥 Proceedings Microscopy Image Analysis with Applications in Biology (MIAAB), Sep. 2011, Heidelberg, Germany. [Abstract] 

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