PhD position in LLMs & complex reasoning for supporting scientific
discovery in cancer (University of Manchester)

We have an exciting new PhD position at the interface between LLMs, complex
reasoning and cancer discovery.

Melanoma is an aggressive type of skin cancer associated with an incidence
of ≈17500 patients and 2300 deaths per year in the United Kingdom.
Immunotherapy (checkpoint inhibitors [CPI]; anti-CTLA-4, anti-PD-1,
anti-LAG3) has revolutionised patient outcomes in melanoma and other
cancers however, challenges remain.  Critically, the presence of liver
metastasis is associated with poor CPI response and prognosis, with
patients with liver metastasis progressing on average 15 months earlier
than those without.

The aims of this exciting project will be to understand complex
interactions between melanoma and cells within the liver microenvironment
to understand mechanisms associated with immune suppression and resistance
to CPI. To do this, the student will systematically integrate curated
databases (e.g. KEGG, Reactome, STRING, and HMDB) alongside systematic
extraction from the literature to derive models of signalling pathways,
metabolic reactions, and protein-protein interactions relevant to this
immunosuppressive environment. The student will develop techniques in open
information extraction, integration of large datasets from multiple
sources, large language models, causal reasoning, natural language
inference and explainable question answering. Furthermore, they will gain
an in-depth understanding of cancer biology and the immune system.

We are looking for a hard-working, focused, ambitious person to join our
excellent, friendly, inclusive and collaborative teams. The student will
enjoy integrating with both the Freitas laboratory which focuses on
development of AI methods to support abstract, explainable and flexible
inference and the Lee laboratory which uses a broad range of in vitro and
in vivo techniques to study melanoma, with the aim of developing novel
therapies for patients. We would be particularly happy to receive
applications from individuals with a strong academic track record and
Masters-level and/or other research experience in artificial intelligence,
large language models and bioinformatics.

The project will provide comprehensive training in cancer biology, large
language models and use of artificial intelligence to inform mechanisms
behind complex tumour-microenvironment interactions and to build complex
models of these.

Essential requirements:



   -

   BSc and MSc in computer science, bioinformatics or related areas.
   -

   Experience in the construction of NLP and ML models evidenced by
   academic or industrial projects.
   -

   Python programming.
   -

   Confident in the development of complex computational pipelines.
   -

   Experience in biomedical problems is a plus.


Interested applicants please send an email to [email protected]
and [email protected] with your CV by December 31st.

Additional information.

https://www.findaphd.com/phds/project/bicentenary-modelling-melanoma-induced-immune-suppression-in-the-liver-microenvironment-using-mechanistic-and-causal-reasoning/?p178987
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