Mehta, Manish
Self-Supervised Learning Featuring Small-Scale Image Dataset for Treatable Retinal Diseases Classification
Huang, Luffina C., Chiu, Darren J., Mehta, Manish
Automated medical diagnosis through image-based neural networks has increased in popularity and matured over years. Nevertheless, it is confined by the scarcity of medical images and the expensive labor annotation costs. Self-Supervised Learning (SSL) is an good alternative to Transfer Learning (TL) and is suitable for imbalanced image datasets. In this study, we assess four pretrained SSL models and two TL models in treatable retinal diseases classification using small-scale Optical Coherence Tomography (OCT) images ranging from 125 to 4000 with balanced or imbalanced distribution for training. The proposed SSL model achieves the state-of-art accuracy of 98.84% using only 4,000 training images. Our results suggest the SSL models provide superior performance under both the balanced and imbalanced training scenarios. The SSL model with MoCo-v2 scheme has consistent good performance under the imbalanced scenario and, especially, surpasses the other models when the training set is less than 500 images.
Reports of the AAAI 2009 Spring Symposia
Bao, Jie (Rensselaer Polytechnic Institute) | Bojars, Uldis (National University of Ireland) | Choudhury, Ranzeem (Dartmouth College) | Ding, Li (Rensselaer Polytechnic Institute) | Greaves, Mark (Vulcan Inc.) | Kapoor, Ashish (Microsoft Research) | Louchart, Sandy (Heriot-Watt University) | Mehta, Manish (Georgia Institute of Technology) | Nebel, Bernhard (Albert-Ludwigs University Freiburg) | Nirenburg, Sergei (University of Maryland Baltimore County) | Oates, Tim (University of Maryland Baltimore County) | Roberts, David L. (Georgia Institute of Technology) | Sanfilippo, Antonio (Pacific Northwest National Laboratory) | Stojanovic, Nenad (University of Karlsruhe) | Stubbs, Kristen (iRobot Corportion) | Thomaz, Andrea L. (Georgia Institute of Technology) | Tsui, Katherine (University of Massachusetts Lowell) | Woelfl, Stefan (Albert-Ludwigs University Freiburg)
The titles of the nine symposia were Agents that Learn from Human Teachers, Benchmarking of Qualitative Spatial and Temporal Reasoning Systems, Experimental Design for Real-World Systems, Human Behavior Modeling, Intelligent Event Processing, Intelligent Narrative Technologies II, Learning by Reading and Learning to Read, Social Semantic Web: Where Web 2.0 Meets Web 3.0, and Technosocial Predictive Analytics. The aim of the Benchmarking of Qualitative Spatial and Temporal Reasoning Systems symposium was to initiate the development of a problem repository in the field of qualitative spatial and temporal reasoning and identify a graded set of challenges for future midterm and long-term research. The Intelligent Event Processing symposium discussed the need for more AI-based approaches in event processing and defined a kind of research agenda for the field, coined as intelligent complex event processing (iCEP). The Intelligent Narrative Technologies II AAAI symposium discussed innovations, progress, and novel techniques in the research domain.
Reports of the AAAI 2009 Spring Symposia
Bao, Jie (Rensselaer Polytechnic Institute) | Bojars, Uldis (National University of Ireland) | Choudhury, Ranzeem (Dartmouth College) | Ding, Li (Rensselaer Polytechnic Institute) | Greaves, Mark (Vulcan Inc.) | Kapoor, Ashish (Microsoft Research) | Louchart, Sandy (Heriot-Watt University) | Mehta, Manish (Georgia Institute of Technology) | Nebel, Bernhard (Albert-Ludwigs University Freiburg) | Nirenburg, Sergei (University of Maryland Baltimore County) | Oates, Tim (University of Maryland Baltimore County) | Roberts, David L. (Georgia Institute of Technology) | Sanfilippo, Antonio (Pacific Northwest National Laboratory) | Stojanovic, Nenad (University of Karlsruhe) | Stubbs, Kristen (iRobot Corportion) | Thomaz, Andrea L. (Georgia Institute of Technology) | Tsui, Katherine (University of Massachusetts Lowell) | Woelfl, Stefan (Albert-Ludwigs University Freiburg)
The Association for the Advancement of Artificial Intelligence, in cooperation with Stanford University's Department of Computer Science, was pleased to present the 2009 Spring Symposium Series, held Monday through Wednesday, March 23–25, 2009 at Stanford University. The titles of the nine symposia were Agents that Learn from Human Teachers, Benchmarking of Qualitative Spatial and Temporal Reasoning Systems, Experimental Design for Real-World Systems, Human Behavior Modeling, Intelligent Event Processing, Intelligent Narrative Technologies II, Learning by Reading and Learning to Read, Social Semantic Web: Where Web 2.0 Meets Web 3.0, and Technosocial Predictive Analytics. The goal of the Agents that Learn from Human Teachers was to investigate how we can enable software and robotics agents to learn from real-time interaction with an everyday human partner. The aim of the Benchmarking of Qualitative Spatial and Temporal Reasoning Systems symposium was to initiate the development of a problem repository in the field of qualitative spatial and temporal reasoning and identify a graded set of challenges for future midterm and long-term research. The Experimental Design symposium discussed the challenges of evaluating AI systems. The Human Behavior Modeling symposium explored reasoning methods for understanding various aspects of human behavior, especially in the context of designing intelligent systems that interact with humans. The Intelligent Event Processing symposium discussed the need for more AI-based approaches in event processing and defined a kind of research agenda for the field, coined as intelligent complex event processing (iCEP). The Intelligent Narrative Technologies II AAAI symposium discussed innovations, progress, and novel techniques in the research domain. The Learning by Reading and Learning to Read symposium explored two aspects of making natural language texts semantically accessible to, and processable by, machines. The Social Semantic Web symposium focused on the real-world grand challenges in this area. Finally, the Technosocial Predictive Analytics symposium explored new methods for anticipatory analytical thinking that provide decision advantage through the integration of human and physical models.