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To detect diseases earlier, let's speak bacteria's secret language

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    You don't know them.
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    You don't see them.
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    But they're always around,
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    whispering,
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    making secret plans,
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    building armies with millions of soldiers.
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    And when they decide to attack,
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    they all attack at the same time.
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    I'm talking about bacteria.
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    (Laughter)
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    Who did you think I was talking about?
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    Bacteria live in communities
    just like humans.
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    They have families,
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    they talk
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    and they plan their activities.
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    And just like humans,
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    they trick, deceive and some might
    even cheat on each other.
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    What if I tell you that we can listen
    to bacterial conversations
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    and translate their confidential
    information into human language?
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    And what if I tell you that translating
    bacterial conversations can save lives?
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    I hold a PhD in nanophysics,
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    and I've used nanotechnology
    to develop a real-time translation tool
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    that can spy on bacterial communities
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    and give us recordings of what
    bacteria are up to.
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    Bacteria live everywhere:
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    they're in the soil,
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    on our furniture
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    and inside our bodies.
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    In fact 90 percent of all of life's cells
    in this theatre are bacterial.
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    Some bacteria are good for us:
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    they help us digest food
    or produce antibiotics.
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    And some bacteria are bad for us:
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    they cause diseases and death.
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    To coordinate all the functions
    bacteria have,
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    they have to be able to organize,
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    and they do that just like us humans --
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    by communicaiting.
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    But instead of using words,
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    they use signaling molecules
    to communicate with each other.
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    When bacteria are few,
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    the signaling molecules just flow away.
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    Like the screams of a man
    alone in the desert.
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    But when their are many bacteria,
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    the signaling molecules accumulate,
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    and the bacteria start sensing
    that they're not alone.
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    They listen to each other.
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    In this way, they keep track
    of how many they are
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    and when they're many enough
    to iniate a new action.
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    And when the signaling molecules
    have reached a certain threshold,
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    all the bacteria sense at once
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    that they need to act
    with the same action.
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    So bacterial conversation consists
    of an initiative and a reaction.
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    A production of a molecule
    and the response to it.
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    In my research I focused on spying
    on bacterial communities
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    inside the human body.
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    How does it work?
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    We have a sample from a patient.
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    It could be a blood or spit sample.
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    We shoot electrons into the sample,
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    the electrons will interact with any
    communication molecules present,
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    and this interaction
    will give us information
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    on the identity of the bacteria,
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    the type of communication
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    and how much the bacteria are talking.
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    But what is it like
    when bacteria communicate?
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    Before I developed the translation tool,
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    my first assumption was that bacteria
    would have a primitive language,
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    like infants that haven't developed
    words and sentences yet.
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    When they laugh, they're happy;
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    when they cry they're sad.
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    Simple as that.
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    But bacteria turned out to be nowhere
    as primitive as I thought they would be.
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    A molecule is not just a molecule;
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    it can mean different things
    depending on the context.
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    Just liek the crying of babies
    can mean different things:
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    sometimes the baby is hungry,
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    sometimes it's wet,
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    sometimes it's hurt or afraid.
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    Parents know how to decode those cries.
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    And to be a real translation tool,
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    it had to be able to decode
    the signaling molecules
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    and translate them depending
    on the context.
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    And who knows?
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    Maybe Google Translate
    will adopt this soon.
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    (Laughter)
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    Let me give you an example.
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    I've brought some bacterial data
    that can be a bit tricky to understand
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    if you're not trained,
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    but try to take a look.
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    (Laughter)
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    Here's a happy bacterial family
    that has infected a patient.
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    Let's call them the Montague family.
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    They share resources,
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    they reproduce
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    and they grow.
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    One day they get a new neighbor ...
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    bacterial family Capulet.
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    (Laughter)
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    Everything is fine
    as long as they're working together.
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    But then something unplanned happens.
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    Romeo from Montague has a relationship
    with Juliet from Capulet.
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    (Laughter)
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    And yes, they share genetic material.
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    (Laughter)
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    Now this gene transfer
    can be dangerous to the Monagues
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    who have the ambition
    to be the only family
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    in the patient they have infected.
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    And sharing genes contributes
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    to the Capulets developing
    resistance to antibiotics.
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    So the Montagues start talking internally
    to get rid of this other family
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    by releasing this molecule.
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    And with subtitles:
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    [Let us coordinate an attack.]
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    (Laughter)
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    Let's coordinate an attack.
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    And then everybody at once responds
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    by releasing a poison
    that will kill the other family.
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    [Eliminate!]
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    (Laughter)
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    The Capulets respond
    by calling for a counterattack.
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    [Counterattack!]
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    And they have a battle.
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    This is a video of real bacteria dueling
    with sword-like organelles
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    where they try to kill each other
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    by literally stabbing
    and rupturing each other.
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    Whoever's family wins this battle
    becomes the dominant bacteria.
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    So what I can do is to detect
    bacterial conversations
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    that lead to different
    collective behaviors
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    like the fight you just saw.
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    And what I did was to spy
    on bacterial communities
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    inside the human body
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    in patients at a hospital.
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    I followed 62 patients in an experiment
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    where I tested the patient samples
    for one particular infection
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    without knowing the results
    of the traditional diagnostic test.
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    Now, in bacterial diagnostics,
    a sample is smeared out on a plate,
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    and if the bacteria grow within five days,
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    the patient is diagnosed as infected.
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    When I finished the study
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    and I compared the tool results
    to the traditional diagnostic test
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    and the validation test,
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    I was shocked.
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    It was far more astonishing
    than I had ever anticipated.
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    But before I tell you
    what the tool revealed,
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    I would like to tell you about
    a specific patient I [followed].
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    A young girl.
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    She had cystic fibrosis,
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    a genetic disease that made her lungs
    susceptible to bacterial infections.
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    This girl wasn't a part
    of the clinical trial.
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    I followed her because I knew
    from her medical record
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    that she had never had
    an infection before.
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    Once a month this girl went the hospital
    to cough up a [.. ... ] sample
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    which she spit in a cup.
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    This sample was transferred
    for bacterial analysis
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    at the central laboratory
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    so the doctor's could act quickly
    if they discovered an infection.
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    And it allowed my to test my device
    on her samples as well.
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    The first two months I measured
    on her samples there was nothing.
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    But the third month,
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    I discovered some bacterial chatter
    in her sample.
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    The bacteria were coordinating
    to damage her lung tissue.
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    But the traditional diagnostics
    showed no bacteria at all.
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    I measured again the next month,
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    and I could see that the bacterial
    conversations became even more aggressive.
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    Still the traditional
    diagnostics showed nothing.
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    My study ended,
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    but a half a year later
    I followed up on her status
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    to see if the bacteria
    only I knew about had disappeared
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    without medical intervention.
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    They hadn't.
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    But the girl was now diagnosed
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    with a severe infection
    of deadly bacteria.
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    It was the very same bacteria
    my tool discovered earlier.
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    And despite aggressive
    antibiotic treatment,
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    it was impossible
    to eradicate the infection.
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    Doctors deemed that she would not
    survive her 20's.
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    When I measured on this girl's samples,
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    my tool was still in the initial stage.
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    I didn't even know
    if my method worked at all,
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    therefore I had an agreement
    with the doctors
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    not to tell them what my tool revealed
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    in order to not
    compromise their treatment.
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    So when I saw these results
    that weren't even validated,
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    I didn't dare to tell,
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    because treating a patient
    without an actual infection
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    also has negative consequences
    for the patient.
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    But now we know better,
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    and there are many young boys
    and girls that still can be saved.
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    Because unfortunately this scenario
    happens very often.
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    Patients get infected,
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    the bacteria somehow don't show
    on the traditional diagnostic test
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    and suddenly the infection breaks out
    in the patient with severe symptoms.
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    And at that point it's already too late.
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    The surprising result
    of the 62 patients I followed
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    was that my device
    caught bacterial conversations
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    in more than half of the patient samples
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    that were diagnosed as negative
    by traditional methods.
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    In other words, more than half
    of these patients went home thinking
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    they were free from infection,
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    although they actually carried
    very dangerous bacteria.
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    Inside these wrongly diagnosed patients,
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    bacteria were coordinating
    a synchronized attack.
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    They were whispering to each other.
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    What I call whispering bacteria
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    are bacteria that traditional methods
    cannot diagnose.
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    So far it's only the translation tool
    that can catch those whispers.
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    I believe that the time frame
    in which bacteria are still whispering
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    is the window of opportunity
    for targeted treatment.
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    If the girl had been treated
    in this window of opportunity,
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    it might have been possible
    to kill the bacteria
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    in their initial stage,
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    before the infection got out of hand.
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    What I experienced with this young girl
    made me decide to do everything I can
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    to push this technology into the hospital.
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    Together with doctors,
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    I'm already working
    on implementing this tool in clinics
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    to diagnose early infections.
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    Although it's still not known
    how doctors should treat patients
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    during the whispering phase,
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    this tool can help doctors
    keep a closer eye on patients in risk.
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    It could help them confirm
    if a treatment had worked or not
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    and it could help answer simple questions:
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    is the patient infected
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    and what are the bacteria up to?
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    Bacteria talk,
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    they make secret plans
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    and they send confidential
    information to each other.
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    But not only can we catch them whispering,
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    we can all learn their secret language
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    and become ourselves,
    bacterial whisperers.
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    And as bacteria would say,
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    "3-oxo-C12-analine."
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    (Laughter)
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    (Applause)
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    Thank you.
Title:
To detect diseases earlier, let's speak bacteria's secret language
Speaker:
Fatima AlZahra’a Alatraktchi
Description:

more » « less
Video Language:
English
Team:
closed TED
Project:
TEDTalks
Duration:
11:41

English subtitles

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