Discussion:
biocomp 1.0.3
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Edward Montague
2020-01-02 14:56:48 UTC
Permalink
At this stage the most productive approach to using machine learning or
artificial intelligence is to determine what drug candidates are being investigated, how, and by who. Then attempt to learn from their discoveries.

Most of the computational effort may already be done, maybe use PyMol,
with a plugin to investigate further.

If anyone here is already using M.L or A.I, perhaps you have some
recommendations.
Edward Montague
2020-01-16 00:24:16 UTC
Permalink
Post by Edward Montague
At this stage the most productive approach to using machine learning or
artificial intelligence is to determine what drug candidates are being investigated, how, and by who. Then attempt to learn from their discoveries.
Most of the computational effort may already be done, maybe use PyMol,
with a plugin to investigate further.
If anyone here is already using M.L or A.I, perhaps you have some
recommendations.
Just been to the Schrodinger.com website, they're partnering with the
pharmaceutical company Bayer, to introduce Machine Learning to the Pymol software. Don't know yet if this will be included in a public
release of Pymol, very interesting if this was the instance.I'd most likely require an upgrade to my P.C system and to look to cloud computing.


Schrodinger have Pymol release 4 for 2020 available, you may need to register to obtain this.

There's other software available, from elsewhere, including Seaview.
Edward Montague
2020-01-17 23:18:18 UTC
Permalink
Post by Edward Montague
At this stage the most productive approach to using machine learning or
artificial intelligence is to determine what drug candidates are being investigated, how, and by who. Then attempt to learn from their discoveries.
Most of the computational effort may already be done, maybe use PyMol,
with a plugin to investigate further.
If anyone here is already using M.L or A.I, perhaps you have some
recommendations.
The Broad Institute recently completed a comprehensive cancer
genome atlas. This may narrow the search for treatments.
Edward Montague
2020-03-08 12:36:51 UTC
Permalink
Post by Edward Montague
At this stage the most productive approach to using machine learning or
artificial intelligence is to determine what drug candidates are being investigated, how, and by who. Then attempt to learn from their discoveries.
Most of the computational effort may already be done, maybe use PyMol,
with a plugin to investigate further.
If anyone here is already using M.L or A.I, perhaps you have some
recommendations.
How might we ensure that Super Computers are used for life extension and the results are made available to a more general
audience, without the requirement of a subscription.
Drug discovery might be the first application.


In the recent publication of the magazine Science, mention is
made of a billion fold speedup of a weather simulation via the
use of Artificial Intelligence; with good precision.
I wonder if this might ever be possible for bio computations.

I often visit Science Daily, Nature. There the article titles
quite often contain the words 'may' and 'could', I must avoid
this practice and research topics in more detail.
Edward Montague
2020-03-16 09:22:01 UTC
Permalink
Post by Edward Montague
At this stage the most productive approach to using machine learning or
artificial intelligence is to determine what drug candidates are being investigated, how, and by who. Then attempt to learn from their discoveries.
Most of the computational effort may already be done, maybe use PyMol,
with a plugin to investigate further.
If anyone here is already using M.L or A.I, perhaps you have some
recommendations.
I've been reviewing the public announcements of Dr.Howard.M.
Temin, nobel recipient.
After consulting with his co recipients, he said that a person
was more likely to get cancer from smoking or radiation.
The the smokers in the audience, which included the royals,
promptly extinguished their cigarettes.

Prior to this, his article in the Jan 1972 edition of Scientific American portrayed a different possibility, this is what I took note.
Eventually Temin and Baltimore acknowledged the validity of
this original interpretation.

A very basic interpretation then, some viruses cause disruptions to the genome, these are passed down through the
generations; to be triggered by some internal or external factor leading to cancers.
Edward Montague
2020-04-06 08:07:25 UTC
Permalink
Post by Edward Montague
At this stage the most productive approach to using machine learning or
artificial intelligence is to determine what drug candidates are being investigated, how, and by who. Then attempt to learn from their discoveries.
Most of the computational effort may already be done, maybe use PyMol,
with a plugin to investigate further.
If anyone here is already using M.L or A.I, perhaps you have some
recommendations.
Dr Howard.Temin may never of published any material, prior to
his Nobel prize; hence one may well conclude that he was receiving the prize for his work on viruses.
A recent article has appeared in Scientific American highlighting the ongoing challenges in understanding the mechanisms of cancer; stating that another 100 years maybe required.
Yet the vaccine against the Human Papilloma Virus is quite
effective at reducing the incidence of the associated cancer.

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