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humans, and perhaps want to better cure their diseases or simply better understand and
recognize how they are built and what separates humans from animals (anthropology).
Consider, both our now very good anti-viral drugs for HIV infection and our modern tar
geted therapies for cancer (Duell et al. 2017) require bioinformatics computations to a
very significant degree. For example, the Antiretroviral Therapy Cohort Collaboration
(2008) showed that even with HIV disease, one has a near normal life expectancy with
early therapy. The new approaches found for this, as well as the countless molecular ther
apy successes in the last two decades, would not have been possible without the support of
molecular experiments by bioinformatics. Intriguingly, the article by Lengauer et al.
(2014) describes how bioinformatics can help develop optimal individualized therapy
against HIV. Similarly, Stratmann et al. (2014), Göttlich et al. (2016) and Baur et al. (2020)
step by step improve a targeted cancer therapy using bioinformatics and cell culture exper
iments. The same is true for attempts to better understand the human brain. Here, com
puter models are important and are currently also being massively funded as an EU lead
project (“Blue Brain” project of the EU). Perhaps a better strategy is to simply listen
carefully to the brain and not immediately think of new computer architectures. This is
precisely the goal of the US government’s Brain Activity project, which is even three times
more heavily funded than the EU project.
16.1
Solving Problems Using Bioinformatics
A common thread in all the great challenges of bioinformatics is climbing to a new level
of language. Whether it is understanding the genetic (protein prediction) and genomic
(gene prediction) code and correctly predicting proteins from foreign genomes or translat
ing the sequence of a protein into three-dimensional protein structures, one is always
climbing a new language level. Of course, this is even more true when doing systems biol
ogy, i.e., approaching the very essence of biological regulation in a deeper way and under
standing forward and feedback loops, recognizing stable system states and can be said in
the same way for ecosystem modeling (Kriegler et al. 2009). Thus, an important starting
point for bioinformatics is first of all interest in the biological problem one wants to
explore. Once one has delved a bit deeper into the problem, it is a matter of finding the
right language to now build a suitable model for this phenomenon. This makes a great deal
clear from the outset: we do not have the truth. It could well be that with a different lan
guage, with new software or even just a different perspective on the biological question,
completely different insights will be possible than with the first approach just chosen. It is
equally clear that only close collaboration with experimental biologists can help to figure
out the best models. “True”, i.e., internally consistent and correct, should be as consistent
as possible in any model. But which model I then actually use is determined solely by the
16 Bioinformatics Connects Life with the Universe and All the Rest