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Microcalcification detection for mass screening programmes

机译:质量筛选程序的微碳化检测

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Discusses some of the issues involved in the selection of appropriate metrics of the evaluation of microcalcification detection algorithms. To measure the sensitivity the authors use a database consisting of films containing clusters associated with biopsy-proven malignancies. In order to measure the algorithm's specificity the authors use a database of non-recalled film pairs. The adoption of these databases overcomes some of the problems associated with the grey area of biopsy-proven benign recalls. The authors quote their results on a per woman basis because this reduces the influence of the variability of radiologist's annotations and also, they believe, gives a better insight into the algorithm's likely effect within a prompting environment. Results detailing the causes of the false prompts within the database used to measure the specificity are presented. These correspond to a fairly high sensitivity measure. The authors believe that these results will be typical of what can be expected when an algorithm is run on large batches of unbiased films, the vast majority of which a radiologist would not recall. From these results the authors conclude that the classification of some clusters as bring clearly benign is an important step towards a successful prompting system. Of all these clearly benign calcification structures vascular calcifications appear to be by far the most frequent and thus an algorithm which correctly classifies them as such is highly desirable. Finally the authors discuss the difference between an algorithm's ROC graph and that of a radiologist prompted by that algorithm. In theory there may be little correspondence between the two. The authors discuss some of the practical difficulties involved in producing the ROC graph for a prompted radiologist and suggest the use of library films of missed cancers may be helpful in reducing the range of parameters sets used to product this ROC graph.
机译:讨论了在选择微钙化检测算法评估的适当度量中涉及的一些问题。为了测量敏感性,作者使用由包含与活组织检查验证的恶性肿瘤相关的簇组成的数据库。为了测量算法的特异性,作者使用非召回的胶片对数据库。通过这些数据库的采用克服了与活组织检查验证的良性召回的灰色区域相关的一些问题。作者以每个女性为基础引用它们的结果,因为这减少了放射科医师的注释的变异性的影响,并且他们认为,他们认为,对算法在提示环境中的可能影响方面更好地了解。结果介绍了用于测量特定特性​​的数据库中虚假提示的原因。这些对应于相当高的灵敏度测量。作者认为,这些结果将是典型的,当算法在大批次的非偏见薄膜上运行算法时,绝大多数放射科医师不会记得。从这些结果来看,作者得出结论,一些集群的分类为显然良性是朝着成功提示系统的重要一步。在所有这些清楚的良性钙化结构中,血管钙化似乎到目前为止,最常见的是,这是一个正确地对它们进行正确分类它们的算法。最后,作者讨论了算法的ROC图表与该算法提示的放射科学家之间的差异。理论上,两者之间可能几乎没有对应的对应。作者讨论了为提示的放射科学家制作ROC图表所涉及的一些实际困难,并建议使用错过的癌症库薄膜可能有助于减少用于产品该ROC图形的参数集的范围。

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