New Drug Target Found for Leukemia-linked Diseases
- Bias Rating
- Reliability
60% ReliableAverage
- Policy Leaning
44% Medium Right
- Politician Portrayal
N/A
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Bias Score Analysis
The A.I. bias rating includes policy and politician portrayal leanings based on the author’s tone found in the article using machine learning. Bias scores are on a scale of -100% to 100% with higher negative scores being more liberal and higher positive scores being more conservative, and 0% being neutral.
Sentiments
-18% Negative
- Liberal
- Conservative
Sentence | Sentiment | Bias |
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Reliability Score Analysis
Policy Leaning Analysis
Politician Portrayal Analysis
Bias Meter
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-100%
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100%
Conservative

Contributing sentiments towards policy:
59% : Tax is crucial for viral gene expression, viral transmission and the development of cancer.51% : " The study showed that KDR's role in the survival of HTLV-1-infected cells is connected to the viral protein called Tax.
44% : "KDR is not normally expressed in T cells, but Tax turns on its expression and hijacks its function, enabling it to stabilize and protect itself from degradation.
43% : They determined that blocking a class of enzymes called kinases, which regulates cellular functions, leads to cell death caused by the degradation of Tax, a protein essential for viral gene expression, viral transmission and survival of cells infected by HTLV-1.
42% : Cells that didn't express Tax weren't sensitive to KDR inhibition and didn't die.
37% : Suppression of KDR leads to the degradation of Tax and disrupts cancer-causing signaling pathways, leading to cell death.
*Our bias meter rating uses data science including sentiment analysis, machine learning and our proprietary algorithm for determining biases in news articles. Bias scores are on a scale of -100% to 100% with higher negative scores being more liberal and higher positive scores being more conservative, and 0% being neutral. The rating is an independent analysis and is not affiliated nor sponsored by the news source or any other organization.