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Postdoctoral Fellow - Machine Learning and Clinical Informatics

  • ... Bethesda, Madrid, United States
  • ... Full time
  • ... Salary: 71800 per year
  • Posted on: Mar 12, 2024       Expires on: Apr 26, 2024

Postdoctoral Fellow - Machine Learning and Clinical Informatics   

JOB TITLE:

Postdoctoral Fellow - Machine Learning and Clinical Informatics

JOB TYPE:

Full-time

JOB LOCATION:

Bethesda Madrid United States

JOB DESCRIPTION:

National Library of Medicine, Bethesda, MD and surrounding area

About the position

Description

The National Library of Medicine has an opening for a postdoctoral fellow in the lab of Dr.
Jeremy Weiss (https://www.
nlm.
nih.
gov/research/researchstaff/WeissJeremy.
html) for research in machine learning and clinical informatics.
Research directions include: increasing performance and trustworthiness of deep learning in healthcare, improving natural language processing methods for risk forecasting, and developing bridging methods across algorithmic fairness and survival analysis.

Compensation

See the NIH Stipend Schedule: https://www.
training.
nih.
gov/documents/11/2023_IRTA_and_VF_Stipend_Tables.
pdf.
Fellows with a quantitative focus may receive an additional supplement of up to ten thousand dollars per annum.

We are seeking to investigate methods that learn from longitudinal, multimodal (text-and-tabular) data present in electronic health records data that (1) are predictive and are useful for forecasting, and (2) that preserve interrogable properties.
The research will address the trustworthiness of EHR data for clinical decision making.
Relevant experience includes expertise in representation learning, signal processing, longitudinal data, ethical AI, and multi-modal learning, with applications in health domains.
Relevant programming experience includes pytorch/tensorboard/huggingface/sklearn and R/tidyverse.

Recent relevant publications:

  • Zhang, Wenbin, and Jeremy Weiss.
    \"\"Longitudinal fairness with censorship.
    \"\" Proceedings of the AAAI Conference on Artificial Intelligence.
    2022.
    (https://arxiv.
    org/pdf/2203.
    16024v2.
    pdf)
  • Cheng, C.
    and Weiss, JC.
    \"\"Typed Markers and Context for Clinical Temporal Relation Extraction.
    \"\" Machine Learning for Healthcare.
    PMLR, 2023.
    (https://static1.
    squarespace.
    com/static/59d5ac1780bd5ef9c396eda6/t/64d198242588467b55e5b7e0/1691457572386/ID23_Research+Paper_2023.
    pdf)
  • Noroozizadeh, S.
    , Weiss, JC; and George Chen.
    Temporal Supervised Contrastive Learning for Modeling Patient Risk Progression.
    Machine Learning for Health, PMLR, 2023.
    (https://proceedings.
    mlr.
    press/v225/noroozizadeh23a/noroozizadeh23a.
    pdf)

Apply for this vacancy

What you'll need to apply

Applicants should email the materials below to Jeremy Weiss, MD, PhD at jeremy.
weiss@nih.
gov.

  • cover letter with a short research statement and preferred starting date,
  • CV,
  • link(s) to published artifacts (packages, github repos, etc), and
  • contact information for 3 references.

Applications will be accepted until the position is filled.

Contact name

Jeremy Weiss

Contact email

jeremy.
weiss@nih.
gov

Qualifications

  • PhD, MD, or equivalent in related subject areas, including machine learning, computer
  • science, medicine, bioinformatics, biomedical informatics and statistics/biostatistics;
  • Publishing experience with peer-reviewed journals and/or conferences in the above areas;
  • Appointees may be U.
    S.
    citizens, permanent residents, or foreign nationals (visa requirements apply).

Timing: postdoctoral fellowships are for 2 years with the possibility for extension.
Candidates

are subject to a background investigation.
Applicants will be reviewed on a rolling basis.

Additional Information

The NIH is dedicated to building a diverse community in its training and employment programs and encourages the application and nomination of qualified women, minorities, and individuals with disabilities.

Position Details

POSTED:

Mar 12, 2024

EMPLOYMENT:

Full-time

SALARY:

71800 per year

SNAPRECRUIT ID:

S-1710389405-9d2d0503ce80c5b4ddf1643ad48b4476

LOCATION:

Madrid United States

CITY:

Bethesda

Job Origin:

jpick2

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National Library of Medicine, Bethesda, MD and surrounding area

About the position

Description

The National Library of Medicine has an opening for a postdoctoral fellow in the lab of Dr. Jeremy Weiss (https://www.nlm.nih.gov/research/researchstaff/WeissJeremy.html) for research in machine learning and clinical informatics. Research directions include: increasing performance and trustworthiness of deep learning in healthcare, improving natural language processing methods for risk forecasting, and developing bridging methods across algorithmic fairness and survival analysis.

Compensation

See the NIH Stipend Schedule: https://www.training.nih.gov/documents/11/2023_IRTA_and_VF_Stipend_Tables.pdf. Fellows with a quantitative focus may receive an additional supplement of up to ten thousand dollars per annum.

We are seeking to investigate methods that learn from longitudinal, multimodal (text-and-tabular) data present in electronic health records data that (1) are predictive and are useful for forecasting, and (2) that preserve interrogable properties. The research will address the trustworthiness of EHR data for clinical decision making. Relevant experience includes expertise in representation learning, signal processing, longitudinal data, ethical AI, and multi-modal learning, with applications in health domains. Relevant programming experience includes pytorch/tensorboard/huggingface/sklearn and R/tidyverse.

Recent relevant publications:

  • Zhang, Wenbin, and Jeremy Weiss. \"\"Longitudinal fairness with censorship.\"\" Proceedings of the AAAI Conference on Artificial Intelligence. 2022. (https://arxiv.org/pdf/2203.16024v2.pdf)
  • Cheng, C. and Weiss, JC. \"\"Typed Markers and Context for Clinical Temporal Relation Extraction.\"\" Machine Learning for Healthcare. PMLR, 2023. (https://static1.squarespace.com/static/59d5ac1780bd5ef9c396eda6/t/64d198242588467b55e5b7e0/1691457572386/ID23_Research+Paper_2023.pdf)
  • Noroozizadeh, S., Weiss, JC; and George Chen. Temporal Supervised Contrastive Learning for Modeling Patient Risk Progression. Machine Learning for Health, PMLR, 2023. (https://proceedings.mlr.press/v225/noroozizadeh23a/noroozizadeh23a.pdf)

Apply for this vacancy

What you'll need to apply

Applicants should email the materials below to Jeremy Weiss, MD, PhD at jeremy.weiss@nih.gov.

  • cover letter with a short research statement and preferred starting date,
  • CV,
  • link(s) to published artifacts (packages, github repos, etc), and
  • contact information for 3 references.

Applications will be accepted until the position is filled.

Contact name

Jeremy Weiss

Contact email

jeremy.weiss@nih.gov

Qualifications

  • PhD, MD, or equivalent in related subject areas, including machine learning, computer
  • science, medicine, bioinformatics, biomedical informatics and statistics/biostatistics;
  • Publishing experience with peer-reviewed journals and/or conferences in the above areas;
  • Appointees may be U.S. citizens, permanent residents, or foreign nationals (visa requirements apply).

Timing: postdoctoral fellowships are for 2 years with the possibility for extension. Candidates

are subject to a background investigation. Applicants will be reviewed on a rolling basis.

Additional Information

The NIH is dedicated to building a diverse community in its training and employment programs and encourages the application and nomination of qualified women, minorities, and individuals with disabilities.

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