Machine learning and data science will do more to improve healthcare than all the biological sciences combined.
This blog is about how we’re going to gather that health data, mine it and improve the lives of billions.
This blog is also a search for the best data scientists and programmers in the world, who want to join Human Longevity Inc. and work on the most epic challenge – extending the healthy human lifespan. (See bottom of blog for details).
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Your genome consists of approximately 3.2 billion base pairs (your DNA) that literally code for “you.”
Your genes code for what diseases you might get, whether you are good at math or music, how good your memory is, what you look like, what you sound like, how you feel, how long you’ll likely live, and more.
This means that if we can decipher this genomic “code,” we can predict your biological future and proactively work to anticipate and improve your health.
It’s a data problem – and if you are a data scientist or machine-learning expert, it is the most challenging, interesting and important problem you could ever try to tackle.
In the simplest terms, sequencing a genome means turning DNA into a series of four letters that looks like this:
ACAAGATGCCATTGTCCCCCGGCCTCCTGCTG
Each person’s genome produces a text file that is about 300 gigabytes.
When we compare your sequenced genome with millions of other people’s genomes AND other health data sets (see below), we can use machine learning and data mining techniques to correlate certain traits (eye color, what your face looks like) or diseases (Alzheimer’s, Huntington’s) to factors in the data and begin to develop diagnostics/therapies around them.
HLI is creating an “integrated health record” for everyone entering its database. The data sets created will include the following:
Translating between all of this data and your health outcome is, metaphorically, similar to how Google Translate works.
Google Translate (GT) uses a process called statistical machine translation, which means that GT generates translations based on patterns found in large amounts of written text.
Rather than attempt to teach the computer every rule of every language, this approach lets the computer discover the rules for themselves based on statistically significant patterns in the data.
Once it finds these patterns (patterns that are unlikely to occur by chance), it can use this “model” to translate similar text in the future.
With millions and millions of documents/websites/publications online that were already translated, and a crowd of 500 million users to correct and “teach” the algorithm, GT can quickly and accurately translate between 90 different languages.
Our challenge now is applying similar techniques to all of this genomic and integrated health records… and we found the perfect person to lead this effort: Franz Och – the man responsible for building Google Translate.
Franz is a renowned expert in machine learning and machine translation.
He spent 10 years at Google as a Distinguished Research Scientist and the Chief Architect of Google Translate, literally building the system from the ground up.
Now, Franz is Human Longevity Inc.’s Chief Data Scientist, responsible for developing new computational methods to translate between all of the human biological information.
… and he’s building one of the most impressive teams I’ve seen.
When you ask Franz why he’s so excited about HLI, his answer is twofold: the mission and the challenge
Franz explains, “The big thing is the mission – the ability to affect humanity in a positive way. If you are a data scientist, why focus on making a better messaging app or better Internet advertising, when you could be advancing the understanding of disease to make sick people better and of aging to make people live longer, healthier lives?”
As far as the challenge, he goes on: “The big mission is to learn how to interpret the human genome – to be able to predict anything that can be predicted from the source code that runs us.”
HLI is looking for the following:
Many people with these areas of expertise often don’t know about biology and health, and that is okay. We need the outside perspectives to help us tackle this problem in new ways.
At the same time, we are also looking for people with the relevant biology knowledge (genomics, immunology) who are excited to approach their domain in a new way as a massive data and machine-learning problem.
If you think you have what it takes, I encourage you to check out the open positions here and apply.
The Machine Learning Team is based out of Mountain View, CA; the genomics team is based in La Jolla.
If you know of any one who you believe fits the description above, please share this blog with them and help us move humanity forward.
Also read: TOP 50 MOON SHOTS
This email is a briefing of the week's most compelling, abundance-enabling tech developments, curated by Marissa Brassfield in preparation for Abundance 360. Read more about A360 below.
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