Pizzorni Ferrarese Francesca, Simonetti Flavio, Foroni Roberto Israel, Menegaz Gloria
Department of Psychology, Royal Holloway, University of London, Egham TW20 0EX, UK ; Department of Computer Science, University of Verona, 37134 Verona, Italy.
Department of Computer Science, University of Verona, 37134 Verona, Italy.
Int J Biomed Imaging. 2014;2014:128324. doi: 10.1155/2014/128324. Epub 2014 Feb 10.
Validation and accuracy assessment are the main bottlenecks preventing the adoption of image processing algorithms in the clinical practice. In the classical approach, a posteriori analysis is performed through objective metrics. In this work, a different approach based on Petri nets is proposed. The basic idea consists in predicting the accuracy of a given pipeline based on the identification and characterization of the sources of inaccuracy. The concept is demonstrated on a case study: intrasubject rigid and affine registration of magnetic resonance images. Both synthetic and real data are considered. While synthetic data allow the benchmarking of the performance with respect to the ground truth, real data enable to assess the robustness of the methodology in real contexts as well as to determine the suitability of the use of synthetic data in the training phase. Results revealed a higher correlation and a lower dispersion among the metrics for simulated data, while the opposite trend was observed for pathologic ones. Results show that the proposed model not only provides a good prediction performance but also leads to the optimization of the end-to-end chain in terms of accuracy and robustness, setting the ground for its generalization to different and more complex scenarios.
验证和准确性评估是阻碍图像处理算法在临床实践中应用的主要瓶颈。在传统方法中,通过客观指标进行事后分析。在这项工作中,提出了一种基于Petri网的不同方法。基本思想是基于对不准确来源的识别和表征来预测给定管道的准确性。通过一个案例研究对该概念进行了论证:磁共振图像的受试者内刚性和仿射配准。同时考虑了合成数据和真实数据。合成数据允许相对于地面真值对性能进行基准测试,而真实数据能够评估该方法在实际环境中的稳健性,以及确定在训练阶段使用合成数据的适用性。结果显示,模拟数据的指标之间具有更高的相关性和更低的离散度,而病理数据则呈现相反的趋势。结果表明,所提出的模型不仅提供了良好的预测性能,而且在准确性和稳健性方面实现了端到端链的优化,为将其推广到不同且更复杂的场景奠定了基础。