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cascade (see Chap. 5), all other signalling pathways are also active. The cell works with
biochemical reactions and not like a digital silicon computer. Therefore, signals can only
reach their destination if they are amplified in a cascade. Nice examples are the blood
clotting cascade, so that the broken vessel is guaranteed to be closed again safely and
quickly, and also the opposite blood clot dissolving cascade (plasminogen cascade). In the
blood, for example, there is then also the complement cascade for the immune system and
so on. So in general, biology has to come up with a lot of things to cope with the noise.
One possibility to reach highest sensitivity is given for example by the photoreceptors of
our eye, where three inhibitory mechanisms all together return to the resting state and the
initial situation is a hyperpolarization.
A computer or even you yourself with the next transfer with IBAN number use check
bits to be sure that nothing has been changed by mistake. This mechanism also exists. First
of all, all kinds of sequence signals are used for this purpose, which you can find out with
the ELM server, for example, and which ensure in a relatively error-tolerant way that every
protein gets to the right place. However, the stability signals and signals that ensure that a
“wrong” protein, for example one that is too short, is rapidly degraded (so-called “non
sense mediated decay”, NMD, for stopping too early in the case of mRNA from eukary
otes) are also a kind of check bit for proteins. Similar check bits exist for RNA, such as
various methylguanosine caps that mark different types of RNA as mature and regulate the
nuclear or cytoplasmic transport of that RNA and its proteins. Another strategy to better
understand the notoriously complex codes in biological systems is simplification (techni
cal term: dimensionality reduction). The aim is to transform and visualise high-dimensional
data in a new coordinate system (usually 2D). For this purpose, methods of multivariate
statistics such as PCA (Principal Component Analysis; for examples in R see our web
application [Fuchs et al. 2020] or https://rpubs.com/amos593/419546) are applied (explor
ative data analysis). Through dimensionality reduction, one wants to get an overview of
the data and reduce its complexity by decomposing it into principal components. Through
this structuring one wants to extract relevant variables (features) and groups, for example
for the construction of predictive models (Chap. 14), but also to make visible possible
batch effects in the data that may need to be corrected (especially in omics analyses). For
example, the pattern of gene expression is determined by the interaction of many 1000
genes. To get an overview of the most important components involved, PCA can be used
to calculate the two main components of the differences between datasets, giving a quick
overview of which combination of important genes decisively determines the differences.
The method is applicable to all complex datasets, e.g. cardiac fibrosis (Fuchs et al. 2020),
but also in ecology, for example to quickly screen bacterial communities (Kim et al. 2020).
One can also look at the challenges of reliable signal transmission and coding in the cell
in a mathematically exact way for signal cascades and the phosphatases that switch off the
signal and thus better understand how these cellular signals are formed and transmitted
(Heinrich et al. 2002). Phosphatases are important for the regulation of signal amplitude,
7 How to Better Understand Signal Cascades and Measure the Encoded Information