Institute of Computer Science and Computer Methods, Pedagogical University of Krakow, 2 Podchorazych St., 30-084 Krakow, Poland.
Comput Biol Med. 2011 Jun;41(6):402-10. doi: 10.1016/j.compbiomed.2011.04.002. Epub 2011 May 4.
This paper presents a novel method of detecting and describing pathological changes that can be visualized on dynamic computer tomography brain maps (perfusion CT). The system was tested on a set of dynamic perfusion computer tomography maps. Each set consisted of two perfusion maps (CBF, CBV and TTP for testing the irregularity detection algorithm) and one CT brain scan (for the registration algorithm) from 8 different patients with suspected strokes. In 36 of the 84 brain maps, abnormal perfusion was diagnosed. The results of the algorithm were compared with the findings of a team of two radiologists. All of the CBF and CBV maps that did not show a diagnosed asymmetry were classified correctly (i.e. no asymmetry was detected). In four of the TTP maps the algorithm found asymmetries, which were not classified as irregularities in the medical diagnosis; 84.5% of the maps were diagnosed correctly (85.7% for the CBF, 85.7% for the CBV and 82.1% for the TTP); 75% of the errors in the CBF maps and 100% of the errors in the CBV and the TTP maps were caused by the excessive detection of asymmetry regions. Errors in the CBFs and the CBVs were eliminated in cases in which the symmetry axis was selected manually. Subsequently, 96.4% of the CBF maps and 100% of the CBV maps were diagnosed correctly.
这篇论文提出了一种新的方法,可以在动态计算机断层脑图(灌注 CT)上检测和描述病理变化。该系统在一组动态灌注计算机断层图上进行了测试。每个数据集都由两个灌注图(CBF、CBV 和 TTP,用于测试不规则性检测算法)和一个 CT 脑扫描组成(用于注册算法),这些数据来自 8 位疑似中风的患者。在 84 个脑图中有 36 个被诊断为异常灌注。算法的结果与两位放射科医生团队的发现进行了比较。所有未显示诊断性不对称的 CBF 和 CBV 图都被正确分类(即未检测到不对称性)。在四个 TTP 图中,算法发现了不对称性,但在医学诊断中未被归类为不规则性;84.5%的图被正确诊断(CBF 为 85.7%,CBV 为 85.7%,TTP 为 82.1%);CBF 图中的 75%的错误和 CBV 和 TTP 图中的 100%的错误都是由于过度检测不对称区域引起的。在手动选择对称轴的情况下,消除了 CBF 和 CBV 中的错误。随后,96.4%的 CBF 图和 100%的 CBV 图被正确诊断。