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A Crowdsourcing-based Medical Image Classification Method

机译:基于众包的医学图像分类方法

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The main task of medical image mining is to effectively analyze medical image data. Medical image classification algorithms have a high error rate near the threshold. To address the problem, the paper adopts a hybrid approach which combines computers algorithm and crowdsourcing system for image classification. A hybrid framework is proposed, which can achieve a higher accuracy significantly than only use classification algorithms. At the same time, it only processes the images that classification algorithms perform not well, so it has a lower monetary cost. In this framework, a range threshold is generated by using an efficient algorithm that assigns an image to a crowdsourcing or classification algorithm. To ensure the quality of crowdsourcing answers, this paper presents two worker models, Worker Quality Evaluation Model (WQEM)and Worker Performance Prediction Model(WPPM) respectively. Due to the lack of the crowdsourcing platform for processing medical information, medical image classification results are difficult to collect, so this paper proposed a crowdsourcing platform for medical image classification.
机译:医学图像挖掘的主要任务是有效地分析医学图像数据。医学图像分类算法在阈值附近具有较高的错误率。为了解决这个问题,本文采用了一种混合方法,将计算机算法和众包系统相结合进行图像分类。提出了一种混合框架,与仅使用分类算法相比,该框架可以显着提高准确性。同时,仅处理分类算法效果不佳的图像,因此具有较低的货币成本。在此框架中,通过使用将图像分配给众包或分类算法的高效算法来生成范围阈值。为了确保众包回答的质量,本文分别提出了两种工人模型,即工人质量评估模型(WQEM)和工人绩效预测模型(WPPM)。由于缺乏用于处理医学信息的众包平台,难以收集医学图像分类结果,因此本文提出了一种用于医学图像分类的众包平台。

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