St. George Clinical School, University of New South Wales, Sydney, NSW, Australia.
Neurogastroenterol Motil. 2013 Mar;25(3):e215-23. doi: 10.1111/nmo.12077. Epub 2013 Jan 29.
Manual analysis of data acquired from manometric studies of colonic motility is laborious, subject to laboratory bias and not specific enough to differentiate all patients from control subjects. Utilizing a cross-correlation technique, we have developed an automated analysis technique that can reliably differentiate the motor patterns of patients with slow transit constipation (STC) from those recorded in healthy controls.
Pancolonic manometric data were recorded from 17 patients with STC and 14 healthy controls. The automated analysis involved calculation of an indicator value derived from cross-correlations calculated between adjacent recording sites in a manometric trace. The automated technique was conducted on blinded real data sets (observed) and then to determine the likelihood of positive indicator values occurring by chance, the channel number within each individual data set were randomized (expected) and reanalyzed.
In controls, the observed indicator value (3.2 ± 1.4) was significantly greater than that predicted by chance (0.8 ± 1.5; P < 0.0001). In patients, the observed indicator value (-2.7 ± 1.8) did not differ from that predicted by chance (-3.5 ± 1.6; P = 0.1). The indicator value for controls differed significantly from that of patients (P < 0.0001), with all individual patients falling outside of the range of indicator values for controls.
CONCLUSIONS & INFERENCES: Automated analysis of colonic manometry data using cross-correlation separated all patients from controls. This automated technique indicates that the contractile motor patterns in STC patients differ from those recorded in healthy controls. The analytical technique may represent a means for defining subtypes of constipation.
对结肠动力测压研究中获取的数据进行手动分析既费力,又容易受到实验室偏差的影响,且特异性不足,无法将所有患者与对照者区分开来。我们利用互相关技术开发了一种自动化分析技术,该技术能够可靠地区分慢传输型便秘(STC)患者与健康对照者的运动模式。
从 17 例 STC 患者和 14 例健康对照者中记录全结肠测压数据。自动化分析涉及计算源自测压轨迹中相邻记录部位之间互相关计算得出的指标值。该自动化技术对盲态真实数据集(观察)进行分析,然后为了确定阳性指标值出现的可能性,对每个个体数据集的通道数进行随机化(预期)并重新分析。
在对照组中,观察到的指标值(3.2±1.4)显著大于随机预测值(0.8±1.5;P<0.0001)。在患者中,观察到的指标值(-2.7±1.8)与随机预测值(-3.5±1.6)无差异(P=0.1)。对照组的指标值与患者的指标值有显著差异(P<0.0001),所有患者个体的指标值均落在对照组的指标值范围之外。
使用互相关对结肠测压数据进行自动化分析可将所有患者与对照者区分开来。这种自动化技术表明,STC 患者的收缩运动模式与健康对照者记录的模式不同。该分析技术可能代表了定义便秘亚型的一种方法。