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Automated embolus identification using a rule-based expert system.

机译:使用基于规则的专家系统自动识别栓子。

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Transcranial Doppler ultrasound (US) can be used to detect microemboli in the cerebral circulation, but is still limited because it usually relies on "human experts" (HEs) to identify signals corresponding to embolic events. The purpose of this study was to develop an automatic system that could replace the HE and, thus, make the technique more widely applicable and, potentially, more reliable. An expert system, based around a digital signal-processing board, analysed Doppler signal patterns in both the time domain and frequency domain. The system was trained and tested on Doppler signals recorded during the dissection and recovery phases of carotid endarterectomy. It was tested with 74 separate 2.5-min recordings that contained at least 575 artefacts in addition to 253 s of diathermy interference. The results were compared with the results obtained by three HEs. Using a "gold-standard" that classified any event detected by the majority of HEs as an embolus, the automatic system displayed a sensitivity of 94.7% and a specificity of 95.1% for 1151 candidate events 7 dB or more above the clutter (signal-to-clutter ratio, SCR, > or = 7 dB), and 89.6% and 95.3%, respectively, for 2098 candidate events with SCR > or = 5 dB. The system had a very similar performance to individual HEs for SCR > or = 7dB, and was only marginally worse for SCR > or = 5 dB.
机译:经颅多普勒超声(US)可用于检测脑循环中的微栓子,但仍受限制,因为它通常依靠“人类专家”(HE)来识别与栓塞事件相对应的信号。这项研究的目的是开发一种可以代替HE的自动系统,从而使该技术更广泛地适用并且可能更可靠。一个基于数字信号处理板的专家系统可以分析时域和频域的多普勒信号模式。在颈动脉内膜切除术的解剖和恢复阶段记录的多普勒信号上对该系统进行了培训和测试。它用74个单独的2.5分钟记录进行了测试,其中包含253秒钟的透热干扰,其中至少包含575个伪像。将结果与三个HE的结果进行比较。自动系统使用“黄金标准”将大多数HE检测到的任何事件归类为栓塞,对于杂波之上7 dB或更高的1151个候选事件,自动系统显示出94.7%的灵敏度和95.1%的特异性(信号-对于SCR>或= 5 dB的2098个候选事件,杂波比(SCR,>或= 7 dB)分别为89.6%和95.3%。对于SCR>或= 7dB,该系统与单个HE的性能非常相似,而对于SCR>或= 5 dB,该系统仅稍差一些。

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