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News about diseases and London

86 days ago

Analyse the news about diseases and London from multiple sources, get visualizations or extract the entire dataset.

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Bangladesh's ailing former Prime Minister Khaleda Zia to undergo medical treatment in London

86d ago

Bangladesh's ailing former Prime Minister Khaleda Zia to undergo medical treatment in London

Read on: The Star link
86d ago

Saim Ayub to receive medical treatment in London

Read on: The News link
86d ago

Saim Ayub heads to London for specialist treatment

Read on: Nation PK link
86d ago

PCB chairman announces London treatment for Saim Ayub's recovery

Read on: Nation PK link
87d ago

PCB sends Saim Ayub to London for urgent medical treatment

Read on: Nation PK link
87d ago

Ancient skeletons reveal health differences in medieval London

Read on: Phys link
135d ago

Legionnaires' disease outbreak in London, Ont. sends 10 to hospital

Read on: Global News link
245d ago

London, Ont. multiple sclerosis patient enters ring in bid to box her way to cure

Read on: Global News link
273d ago

Afraid of needles? Specialized youth vaccine clinic expands in London, Ont.

Read on: Global News link
289d ago

Covid vaccine makers to clash in London over mRNA patent dispute

Read on: Financial Times link
347d ago

London overtakes West Midlands in measles cases as fears of an outbreak grow

Read on: Independent link
354d ago

London mayor expresses concern about bedbug outbreaks in France

Read on: Le Monde link
541d ago

Alzheimer’s warning signs revealed as former London Mayor Ken Livingstone’s diagnosis is announced

Read on: BBC link
561d ago

London measles warning: Outbreak could hit tens of thousands

Read on: BBC link
627d ago

Dataset

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Analysis

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Evolution through time

Sources analysis:

Distribution of sources in the news

Sections analysis:

Distribution of sections in the news

Current sentiment polarity: neutral with a score of -0.16

neutral 50%
negative 31%
positive 19%

Sentiment polarity through time