2006
DOI: 10.1118/1.2348764
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A semi‐automatic method for peak and valley detection in free‐breathing respiratory waveforms

Abstract: The existing commercial software often inadequately determines respiratory peaks for patients in respiration correlated computed tomography. A semi-automatic method was developed for peak and valley detection in free-breathing respiratory waveforms. First the waveform is separated into breath cycles by identifying intercepts of a moving average curve with the inspiration and expiration branches of the waveform. Peaks and valleys were then defined, respectively, as the maximum and minimum between pairs of alter… Show more

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Cited by 71 publications
(71 citation statements)
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“…Drifts were analyzed separately for each beam by calculating the moving average (window width of two breathing cycles) as suggested in the literature (12,13). The resulting curve was analyzed for a drift which occurred during delivery of each beam relative to its first value.…”
Section: Detailed Motion Evaluationmentioning
confidence: 99%
“…Drifts were analyzed separately for each beam by calculating the moving average (window width of two breathing cycles) as suggested in the literature (12,13). The resulting curve was analyzed for a drift which occurred during delivery of each beam relative to its first value.…”
Section: Detailed Motion Evaluationmentioning
confidence: 99%
“…To evaluate any potential dosimetric consequences on target coverage from using either of the two alignment techniques, a deformable image registration (DIR) algorithm developed by Lu et al (11)(12)(13) was used to calculate accumulated target structure dose-volume histograms (DVHs). Our clinical protocols dictate that daily MVCT localization scans include only the region of primary disease.…”
Section: Dosimetric Evaluation Using Deformable Image Registrationmentioning
confidence: 99%
“…However, the decision boundary to distinguish the irregular patterns from diverse respirations is not clear yet [11], [16]. For example, some studies defined only two (characteristic and uncharacteristic [10]) or three (small, middle, and large [9]) types of irregular breathing motions based on the breathing amplitude to access the target dosimetry [9], [10].…”
mentioning
confidence: 99%
“…Our purpose is to classify irregular patterns, given symptoms that fit into neither the regular pattern nor the regular compression pattern categorizations [17]. Respiratory patterns can be classified as normal or abnormal patterns [16]. The key point of the classification as normal or abnormal breathing patterns is how to extract the dominant feature from the original breathing datasets [18]- [24].…”
mentioning
confidence: 99%