We study a crowdsourcing-based diagnosis algorithm, which is against the fact that currently we do not lack medical staff, but high level experts. Our approach is to make use of the general practitioners’ efforts: For every patient whose illness cannot be judged definitely, we arrange for them to be diagnosed multiple times by different doctors, and we collect the all diagnosis results to derive the final judgement. Our inference model is based on the statistical consistency of the diagnosis data. To evaluate the proposed model, we conduct experiments on both the synthetic and real data; the results show that it outperforms the benchmarks
Thesis (Master's)--University of Washington, 2016-12Background: Surgeons can use wound photographs t...
Annotations are critical for machine learning and developing computer aided diagnosis (CAD) algorith...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Medical crowdsourcing offers hope to patients who suffer from complex health conditions that are dif...
We investigate the feasibility of crowd-based medical diagnosis by posting medical cases on a variet...
Diverse medical traditions follow different ‘grammar’ making encapsulation of varied body of knowled...
Rapid advances in image processing capabilities have been seen across many domains, fostered by the ...
Rapid advances in image processing capabilities have been seen across many domains, fostered by the ...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
Crowdsourcing is the process of simplifying and outsourcing numerous tasks to many untrained individ...
Medical diagnosis, like all products of human cognition, is subject to error. We tested the hypothes...
In this work we investigate whether the innate visual recognition and learning capabilities of untra...
Thesis (Master's)--University of Washington, 2013Objectives: This project evaluates the feasibility ...
The advent of the digital pathology has introduced new avenues of diagnostic medicine. Among them, c...
Cognitive computing systems require human-labeled data for evaluation and often for training. The st...
Thesis (Master's)--University of Washington, 2016-12Background: Surgeons can use wound photographs t...
Annotations are critical for machine learning and developing computer aided diagnosis (CAD) algorith...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Medical crowdsourcing offers hope to patients who suffer from complex health conditions that are dif...
We investigate the feasibility of crowd-based medical diagnosis by posting medical cases on a variet...
Diverse medical traditions follow different ‘grammar’ making encapsulation of varied body of knowled...
Rapid advances in image processing capabilities have been seen across many domains, fostered by the ...
Rapid advances in image processing capabilities have been seen across many domains, fostered by the ...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
Crowdsourcing is the process of simplifying and outsourcing numerous tasks to many untrained individ...
Medical diagnosis, like all products of human cognition, is subject to error. We tested the hypothes...
In this work we investigate whether the innate visual recognition and learning capabilities of untra...
Thesis (Master's)--University of Washington, 2013Objectives: This project evaluates the feasibility ...
The advent of the digital pathology has introduced new avenues of diagnostic medicine. Among them, c...
Cognitive computing systems require human-labeled data for evaluation and often for training. The st...
Thesis (Master's)--University of Washington, 2016-12Background: Surgeons can use wound photographs t...
Annotations are critical for machine learning and developing computer aided diagnosis (CAD) algorith...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...