The National Library of Medicine Pill Image Recognition Challenge: An Initial Report.

Ziv Yaniv, Jessica Faruque, Sally Howe, Kathel Dunn, David Sharlip, Andrew Bond, Pablo Perillan, Olivier Bodenreider, Michael J Ackerman, Terry S Yoo
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引用次数: 21

Abstract

In January 2016 the U.S. National Library of Medicine announced a challenge competition calling for the development and discovery of high-quality algorithms and software that rank how well consumer images of prescription pills match reference images of pills in its authoritative RxIMAGE collection. This challenge was motivated by the need to easily identify unknown prescription pills both by healthcare personnel and the general public. Potential benefits of this capability include confirmation of the pill in settings where the documentation and medication have been separated, such as in a disaster or emergency; and confirmation of a pill when the prescribed medication changes from brand to generic, or for any other reason the shape and color of the pill change. The data for the competition consisted of two types of images, high quality macro photographs, reference images, and consumer quality photographs of the quality we expect users of a proposed application to acquire. A training dataset consisting of 2000 reference images and 5000 corresponding consumer quality images acquired from 1000 pills was provided to challenge participants. A second dataset acquired from 1000 pills with similar distributions of shape and color was reserved as a segregated testing set. Challenge submissions were required to produce a ranking of the reference images, given a consumer quality image as input. Determination of the winning teams was done using the mean average precision quality metric, with the three winners obtaining mean average precision scores of 0.27, 0.09, and 0.08. In the retrieval results, the correct image was amongst the top five ranked images 43%, 12%, and 11% of the time, out of 5000 query/consumer images. This is an initial promising step towards development of an NLM software system and application-programming interface facilitating pill identification. The training dataset will continue to be freely available online at: http://pir.nlm.nih.gov/challenge/submission.html.

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国家药物图书馆药丸图像识别挑战:初步报告。
2016年1月,美国国家医学图书馆宣布了一项挑战竞赛,呼吁开发和发现高质量的算法和软件,对消费者处方药物图像与权威RxIMAGE收藏中的参考药物图像进行排名。这一挑战的动机是卫生保健人员和公众都需要容易地识别未知的处方药。这种能力的潜在好处包括在文件和药物分离的情况下确认药丸,例如在灾难或紧急情况下;当处方药物从品牌药变成普通药时,或者由于任何其他原因,药丸的形状和颜色发生了变化。比赛的数据由两种类型的图像组成,高质量的微距照片,参考图像,以及我们期望拟议应用程序的用户获得的质量的消费者质量照片。提供了一个由2000张参考图像和5000张从1000颗药丸中获得的相应消费者质量图像组成的训练数据集来挑战参与者。从1000颗形状和颜色分布相似的药片中获得的第二个数据集被保留为一个分离的测试集。挑战赛的参赛作品需要产生一个参考图像的排名,并给出一张消费者质量的图像作为输入。使用平均精度质量度量来确定获胜团队,三个获胜者的平均精度得分分别为0.27,0.09和0.08。在检索结果中,在5000张查询/消费者图像中,正确的图像分别有43%、12%和11%的时间位于排名前五的图像中。这是朝着NLM软件系统和应用程序编程接口的发展迈出的有希望的第一步。训练数据集将继续免费在线提供:http://pir.nlm.nih.gov/challenge/submission.html。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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