From these data, the following descriptive
statistics can be computed: (i) for the
females, n 1 = 30, x– 1 = 15.83 days, σ 12 = 31.18;
(ii) for the males,n 2 = 30, x– 2 = 9.80 days, σ 22 =
19.41; and the test is thus:
which is greater than 1.96. So there is a sig-
nificant difference between male and female
adults longevity, at a probability level of 5%.
Figure 20.6 shows the graph summarising
this difference.
Conclusions
QC workers usually collect a lot of quantita-
tive and qualitative data. These data have to
be synthesized properly to assess the quality
of beneficial organisms as biocontrol agents.
For this, statistical tools provide substantial
help, both in summarizing the main features
of the samples collected and in checking
whether the mass-reared animals are satisfy-
ing predefined criteria. The statistical proce-
dures discussed in this chapter are those
which only consider samples described by
one or two variables. Further information
about these tests can be found in statistical
handbooks. There are a number of software
packages that include the above-described
tests, such as: (i) SAS®(SAS Institute, Inc.
(1990); http://www.sas.com/products/
sassystem/index.html); (ii) STATISTICA®
(http://www.statsoftinc.com/); (iii) SPSS®
(http://www.spss.com/); and (iv) SYSTAT®
(http://www.spssscience. com/systat/). Of
course, studying the quality of a mass-pro-
duced animal cannot be carried out by
describing only two traits. So, in most of the
cases, more than two traits are measured
simultaneously. For example, in order to
assess the quality of the aphid parasitoid
Aphelinus abdominalis, at least five biological
traits have to be quantified: (i) emergence
rate; (ii) sex ratio; (iii) adult size; (iv) female
fecundity; and (v) adult mortality. In order to
handle these kinds of data sets, the proce-
dures described here should be generalized
using multivariate (also called multidimen-
sional) methods. More accurately, multidi-
mensional correlations can be computed and
tested in order to see whether there is some
redundancy between the different traits
studied. Besides this, multidimensional con-
fidence intervals can also be constructed in
order to check whether the averages of the
different traits quantified satisfy the prede-
fined multidimensional standard. However,
the corresponding methods, which are just a
generalization of those presented here, can-
not be used without some specific statistical
computer software package running on
microcomputers or on mainframes, and
these are not described here. Finally, the only
way to prove that a mass-produced biocon-
trol agent is of a good quality is to check,
after it has been released in the field,
whether its pest-control efficiency is suffi-
cient. Therefore, there is also a need for sta-
tistical methods to determine the correlation
between such a field efficiency and the sim-
ple traits that are quantified in the labora-
tory. As the corresponding methods are also
based on multivariate approaches, special
Statistical Methods for Quality Control 313
Longevity of males in days:
13 11 15 7 9 15 9 11 14 7 9 12 8 16 16
171068616102131160935
t =−1583 980 3118 30 1941 30 464.././ ./ ., + =
20
15
10
5
Females Males
Longevity (days)
Fig. 20.6.Average (±SE) longevity of females and
males of T.brassicae.