Martin C. Stumpe
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Publication
Featured researches published by Martin C. Stumpe.
JAMA | 2016
Varun Gulshan; Lily Peng; Marc Coram; Martin C. Stumpe; Derek Wu; Arunachalam Narayanaswamy; Subhashini Venugopalan; Kasumi Widner; Tom Madams; Jorge Cuadros; Ramasamy Kim; Rajiv Raman; Philip C. Nelson; Jessica L. Mega; Dale R. Webster
Importance Deep learning is a family of computational methods that allow an algorithm to program itself by learning from a large set of examples that demonstrate the desired behavior, removing the need to specify rules explicitly. Application of these methods to medical imaging requires further assessment and validation. Objective To apply deep learning to create an algorithm for automated detection of diabetic retinopathy and diabetic macular edema in retinal fundus photographs. Design and Setting A specific type of neural network optimized for image classification called a deep convolutional neural network was trained using a retrospective development data set of 128 175 retinal images, which were graded 3 to 7 times for diabetic retinopathy, diabetic macular edema, and image gradability by a panel of 54 US licensed ophthalmologists and ophthalmology senior residents between May and December 2015. The resultant algorithm was validated in January and February 2016 using 2 separate data sets, both graded by at least 7 US board-certified ophthalmologists with high intragrader consistency. Exposure Deep learning-trained algorithm. Main Outcomes and Measures The sensitivity and specificity of the algorithm for detecting referable diabetic retinopathy (RDR), defined as moderate and worse diabetic retinopathy, referable diabetic macular edema, or both, were generated based on the reference standard of the majority decision of the ophthalmologist panel. The algorithm was evaluated at 2 operating points selected from the development set, one selected for high specificity and another for high sensitivity. Results The EyePACS-1 data set consisted of 9963 images from 4997 patients (mean age, 54.4 years; 62.2% women; prevalence of RDR, 683/8878 fully gradable images [7.8%]); the Messidor-2 data set had 1748 images from 874 patients (mean age, 57.6 years; 42.6% women; prevalence of RDR, 254/1745 fully gradable images [14.6%]). For detecting RDR, the algorithm had an area under the receiver operating curve of 0.991 (95% CI, 0.988-0.993) for EyePACS-1 and 0.990 (95% CI, 0.986-0.995) for Messidor-2. Using the first operating cut point with high specificity, for EyePACS-1, the sensitivity was 90.3% (95% CI, 87.5%-92.7%) and the specificity was 98.1% (95% CI, 97.8%-98.5%). For Messidor-2, the sensitivity was 87.0% (95% CI, 81.1%-91.0%) and the specificity was 98.5% (95% CI, 97.7%-99.1%). Using a second operating point with high sensitivity in the development set, for EyePACS-1 the sensitivity was 97.5% and specificity was 93.4% and for Messidor-2 the sensitivity was 96.1% and specificity was 93.9%. Conclusions and Relevance In this evaluation of retinal fundus photographs from adults with diabetes, an algorithm based on deep machine learning had high sensitivity and specificity for detecting referable diabetic retinopathy. Further research is necessary to determine the feasibility of applying this algorithm in the clinical setting and to determine whether use of the algorithm could lead to improved care and outcomes compared with current ophthalmologic assessment.
computer vision and pattern recognition | 2015
Yair Movshovitz-Attias; Qian Yu; Martin C. Stumpe; Vinay Damodar Shet; Sacha Christophe Arnoud; Liron Yatziv
Modern search engines receive large numbers of business related, local aware queries. Such queries are best answered using accurate, up-to-date, business listings, that contain representations of business categories. Creating such listings is a challenging task as businesses often change hands or close down. For businesses with street side locations one can leverage the abundance of street level imagery, such as Google Street View, to automate the process. However, while data is abundant, labeled data is not; the limiting factor is creation of large scale labeled training data. In this work, we utilize an ontology of geographical concepts to automatically propagate business category information and create a large, multi label, training dataset for fine grained storefront classification. Our learner, which is based on the GoogLeNet/Inception Deep Convolutional Network architecture and classifies 208 categories, achieves human level accuracy.
arXiv: Computer Vision and Pattern Recognition | 2017
Yun Liu; Krishna Kumar Gadepalli; Mohammad Norouzi; George E. Dahl; Timo Kohlberger; Subhashini Venugopalan; Aleksey S Boyko; Aleksei Timofeev; Philip Q Nelson; Greg Corrado; Jason Hipp; Lily Peng; Martin C. Stumpe
Archive | 2017
Liron Yatziv; Yair Movshovitz-Attias; Qian Yu; Martin C. Stumpe; Vinay Damodar Shet; Sacha Christophe Arnoud
arXiv: Computer Vision and Pattern Recognition | 2015
Qian Yu; Christian Szegedy; Martin C. Stumpe; Liron Yatziv; Vinay Damodar Shet; Julian Ibarz; Sacha Christophe Arnoud
The American Journal of Surgical Pathology | 2018
David F. Steiner; Robert MacDonald; Yun Liu; Peter Truszkowski; Jason Hipp; Christopher Gammage; Florence Thng; Lily Peng; Martin C. Stumpe
Archive | 2018
Lily Peng; Dale R. Webster; Philip C. Nelson; Varun Gulshan; Marc Coram; Martin C. Stumpe; Derek Wu; Arunachalam Narayanaswamy; Avinash Vaidyanathan Varadarajan; Katharine Blumer; Yun Liu; Ryan Poplin
Cancer Research | 2018
Jason Hipp; Martin C. Stumpe
Archives of Pathology & Laboratory Medicine | 2018
Yun Liu; Timo Kohlberger; Mohammad Norouzi; George E. Dahl; Jenny L. Smith; Arash Mohtashamian; Niels Olson; Lily Peng; Jason Hipp; Martin C. Stumpe
Archives of Pathology & Laboratory Medicine | 2018
Yun Liu; Timo Kohlberger; Mohammad Norouzi; George E. Dahl; Jenny L. Smith; Arash Mohtashamian; Niels Olson; Lily Peng; Jason Hipp; Martin C. Stumpe