Hamilton D, Riley P J, Miola U J, Amro A A
Department of Medical Physics, Armed Forces Hospital, Riyadh, Kingdom of Saudi Arabia.
Br J Radiol. 1995 Nov;68(815):1208-11. doi: 10.1259/0007-1285-68-815-1208.
Artificial neural networks are computer systems which can be trained to recognize similarities in patterns and which learn by example; one of the more straightforward types being the feed forward neural network (FFNN). We previously reported the use of FFNNs for classification of hypoperfusion patterns in bull's-eye representation of 201Tl single photon emission tomography myocardial perfusion studies and showed that, when such an image was divided into 24 segments, FFNNs could detect perfusion defects without direct comparison to a normal data base. This has been extended in this investigation to assess the ability of an FFNN, trained on data in which only a single segment was hypoperfused, to detect this abnormal segment when the hypoperfusion pattern of the other segments in the image varied. The results indicated that the network could reliably determine whether a segment was normally or under perfused, with accuracies of 99% and 100%, respectively, if all other segments were normally perfused. It could also reliably detect a normally perfused segment, even if other segments were hypoperfused, with accuracies of 95% and 98%. The network was less reliable, however, in detecting a hypoperfused segment when other segments were also hypoperfused, showing accuracies of only 74% and 88%.
人工神经网络是一种计算机系统,它可以通过示例进行训练以识别模式中的相似性;其中一种较为直接的类型是前馈神经网络(FFNN)。我们之前报道了使用FFNN对201Tl单光子发射断层扫描心肌灌注研究的靶心图中的灌注不足模式进行分类,并表明,当将此类图像分为24个节段时,FFNN无需与正常数据库直接比较就能检测到灌注缺损。在本研究中,这一应用得到了扩展,以评估一个在前馈神经网络,该网络是在仅一个节段灌注不足的数据上进行训练的,当图像中其他节段的灌注不足模式发生变化时,它检测该异常节段的能力。结果表明,如果所有其他节段灌注正常,该网络能够可靠地确定一个节段是灌注正常还是灌注不足,准确率分别为99%和100%。即使其他节段灌注不足,它也能够可靠地检测出灌注正常的节段,准确率分别为95%和98%。然而,当其他节段也灌注不足时,该网络在检测灌注不足节段方面的可靠性较低,准确率仅为74%和88%。