Table 1 Linear regression analysis for inactivation of A.hydrophila ATCC 35654 under 3 different flow rates Flow rate Enumeration condition Linear regression equation #selleck kinase inhibitor randurls[1|1|,|CHEM1|]# R2 values 4.8 L h-1 Aerobic Y = 0.0004X+0.976 0.535 ROS-neutralised Y = 0.0018X-0.010 0.751 8.4 h-1 Aerobic Y = 0.0002X+0.981 0.179 ROS-neutralised Y = 0.0012X+0.084 0.650 16.8 L h-1 Aerobic Y = 0.0004X+0.496 0.311 ROS-neutralised Y = 0.0009X+0.048 0.503 Figure 3b and 3c showed
the log inactivation data for A.hydrophila ATCC 35654 in spring water run through the reactor at flow rates of 8.4 L h-1 and 16.8 L h-1, respectively, under equivalent sunlight conditions to those shown in Figure 3a. Both graphs show a similar pattern of greater proportional cell injury, manifest as ROS-sensitivity and lack of growth under aerobic conditions, to the data for low flow rate (Figure 3a) when the total sunlight intensity was < 600 W m-2. Similarly, when the total sunlight intensity was 600-1100 W m-2, there was a greater log inactivation and less evidence of sub-lethal injury. Linear regression analyses were also carried out for flow rate data at 8.4 and 16.8 L h-1. At both flow rates, the trend lines based on aerobic counts gave positive intercepts whereas the ROS-neutralised data showed an intercept close to zero, in line with the outcome at 4.8 L h-1 (Table 1).
Similarly, the aerobic count data at 8.4 and 16.8 L 3-deazaneplanocin A mouse h-1 had lower regression coefficients than for ROS-neutralised data. Overall, the interpretation of these data is that aerobic counts overestimate the apparent inactivation of A. hydrophila ATCC35654 and that ROS-neutralised counts are required to provide counts of injured and healthy cells, with trend lines that fit with the logic mafosfamide of a zero
intercept and a strong fit of the data to the trend line. Based on ROS-neutralised data, there is a strong effect of flow rate on photocatalysis using the TFFBR–this is evident from the decrease in slope for the linear regression analysis based on the ROS-neutralised data from the slowest flow rate (4.8 L h-1) to the fastest flow rate (16.8 L h-1), shown in Table 1. An equivalent change was not observed for aerobic data, which again points to the issues around low aerobic counts at low sunlight intensities and their effects on the overall trend data. The data in Figure 3 also demonstrate that the combination of a low flow rate of 4.8 L h-1 combined with a total sunlight intensity of 600 W m-2 or more gave the greatest log inactivation of A. hydrophila ATCC 35654, pointing to such conditions as being most effective for solar photocatalysis. Interrelationship of flow rate and solar UV on inactivation of Aeromonas hydrophila Figure 4 shows the log inactivation rate of A.