School of Computer Science, Bangor University, Bangor, UK.
IEEE Trans Biomed Eng. 2012 Oct;59(10):2942-9. doi: 10.1109/TBME.2012.2213251. Epub 2012 Aug 15.
We present and analyze the behavior of an evolutionary algorithm designed to estimate the parameters of a complex organ behavior model. The model is adaptable to account for patient's specificities. The aim is to finely tune the model to be accurately adapted to various real patient datasets. It can then be embedded, for example, in high fidelity simulations of the human physiology. We present here an application focused on respiration modeling. The algorithm is automatic and adaptive. A compound fitness function has been designed to take into account for various quantities that have to be minimized. The algorithm efficiency is experimentally analyzed on several real test cases: 1) three patient datasets have been acquired with the "breath hold" protocol, and 2) two datasets corresponds to 4-D CT scans. Its performance is compared with two traditional methods (downhill simplex and conjugate gradient descent): a random search and a basic real-valued genetic algorithm. The results show that our evolutionary scheme provides more significantly stable and accurate results.
我们提出并分析了一种进化算法的行为,该算法旨在估计复杂器官行为模型的参数。该模型具有适应性,可以考虑患者的特异性。目的是精细调整模型,使其能够准确地适应各种真实患者数据集。然后,它可以嵌入到人体生理学的高保真模拟中。我们在这里介绍一个专注于呼吸建模的应用。该算法是自动和自适应的。已经设计了一个复合适应度函数,以考虑到必须最小化的各种数量。该算法的效率在几个真实测试用例上进行了实验分析:1)使用“呼吸暂停”协议采集了三个患者数据集,2)两个数据集对应于 4-D CT 扫描。将其性能与两种传统方法(下山单纯形法和共轭梯度下降法)进行了比较:随机搜索和基本实值遗传算法。结果表明,我们的进化方案提供了更稳定和准确的结果。