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'Killers' part 1 - Mosquito genomes and malaria control

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Big Questions - with Oxford Sparks
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Can studying Mosquito population genomes help to stop the spread of Malaria?
Malaria is a huge problem, affecting millions of people worldwide. Mosquitoes spread the disease by passing on a parasite as it feeds on blood. Dr Alistair Miles talks us through one part of the puzzle of tackling the disease through understanding mosquito populations. Can we tell from sequencing the genomes of mosquitoes whether bed nets are effective? Do their genes reveal how we might monitor the spread of insecticide resistance?

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Big Questions - with Oxford Sparks

'Clues' part 3 - Picking apart the genetics of speech and language disorders

How do you start to pick apart speech at the genetic level? Dr Dianne Newbury explains what Specific Language Impairment is and how her research is unravelling a pretty complicated picture.
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Big Questions - with Oxford Sparks

'Killers' part 2 - Keeping water flowing with smartphones

Water pumps are a lifeline for many communities in developing countries. But how can you monitor them all to know whether they're in working order? And can you collect data based on pump usage to provide useful insights into community health?
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Episode Information

Series
Big Questions - with Oxford Sparks
People
Alistair Miles
Keywords
Medicine
genomes
malaria
mosquitoes
Department: Mathematical, Physical and Life Sciences (MPLS)
Date Added: 15/12/2015
Duration: 00:12:56

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