间接免疫荧光
模式识别(心理学)
人工智能
免疫荧光
计算机科学
自动化
编码(内存)
支持向量机
抗核抗体
抗体
生物
自身抗体
免疫学
工程类
机械工程
作者
Siyamalan Manivannan,Wenqi Li,Shazia Akbar,Ruixuan Wang,Jianguo Zhang,S.J. McKenna
标识
DOI:10.1016/j.patcog.2015.09.015
摘要
Immunofluorescence antinuclear antibody tests are important for diagnosis and management of autoimmune conditions; a key step that would benefit from reliable automation is the recognition of subcellular patterns suggestive of different diseases. We present a system to recognize such patterns, at cellular and specimen levels, in images of HEp-2 cells. Ensembles of SVMs were trained to classify cells into six classes based on sparse encoding of texture features with cell pyramids, capturing spatial, multi-scale structure. A similar approach was used to classify specimens into seven classes. Software implementations were submitted to an international contest hosted by ICPR 2014 (Performance Evaluation of Indirect Immunofluorescence Image Analysis Systems). Mean class accuracies obtained on heldout test data sets were 87.1% and 88.5% for cell and specimen classification respectively. These were the highest achieved in the competition, suggesting that our methods are state-of-the-art. We provide detailed descriptions and extensive experiments with various features and encoding methods.
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