Unit of Computer Systems and Bioinformatics, Department of Engineering, Università Campus Bio-Medico di Roma, Via Alvaro del Portillo 21, 00128 Rome, Italy.
Dipartimento di Ingegneria Elettrica e delle Tecnologie dell'Informazione, Università degli Studi di Napoli Federico II, Via Claudio 21, 80125 Naples, Italy.
Artif Intell Med. 2019 Jun;97:71-78. doi: 10.1016/j.artmed.2018.11.002. Epub 2018 Nov 28.
The indirect immunofluorescence (IIF) on HEp-2 cells is the recommended technique for the detection of antinuclear antibodies. However, it is burdened by some limitations, as it is time consuming and subjective, and it requires trained personnel. In other fields the adoption of deep neural networks has provided an effective high-level abstraction of the raw data, resulting in the ability to automatically generate optimized high-level features.
To alleviate IIF limitations, this paper presents a computer-aided diagnosis (CAD) system classifying HEp-2 fluorescence intensity: it represents each image using an Invariant Scattering Convolutional Network (Scatnet), which is locally translation invariant and stable to deformations, a characteristic useful in case of HEp-2 samples. To cope with the inter-observer discrepancies found in the dataset, we also introduce a method for gold standard computation that assigns a label and a reliability score to each HEp-2 sample on the basis of annotations provided by expert physicians. Features by Scatnet and gold standard information are then used to train a Support Vector Machine.
The proposed CAD is tested on a new dataset of 1771 images annotated by three independent medical centers. The performances achieved by our CAD in recognizing positive, weak positive and negative samples are also compared against those obtained by other two approaches presented so far in the literature. The same system trained on this new dataset is then tested on two public datasets, namely MIVIA and I3Asel.
The results confirm the effectiveness of our proposal, also revealing that it achieves the same performance as medical experts.
间接免疫荧光(IIF)在 HEp-2 细胞上是检测抗核抗体的推荐技术。然而,它存在一些局限性,如耗时且主观,并且需要经过培训的人员。在其他领域,深度神经网络的采用为原始数据提供了有效的高级抽象,从而能够自动生成优化的高级特征。
为了缓解 IIF 的局限性,本文提出了一种用于分类 HEp-2 荧光强度的计算机辅助诊断(CAD)系统:它使用不变散射卷积网络(Scatnet)表示每个图像,Scatnet 具有局部平移不变性和对变形的稳定性,这在 HEp-2 样本中是有用的特征。为了应对数据集发现的观察者间差异,我们还引入了一种用于黄金标准计算的方法,该方法根据专家医生提供的注释,为每个 HEp-2 样本分配标签和可靠性分数。然后,使用 Scatnet 的特征和黄金标准信息来训练支持向量机。
所提出的 CAD 在由三个独立医疗中心注释的 1771 张图像的新数据集上进行了测试。我们的 CAD 在识别阳性、弱阳性和阴性样本方面的性能,也与迄今为止文献中提出的其他两种方法进行了比较。然后,在这个新数据集上训练的相同系统在两个公共数据集 MIVIA 和 I3Asel 上进行了测试。
结果证实了我们的方案的有效性,同时还表明它达到了与医学专家相同的性能。