Resume-aware faculty matching

Find professors who actually fit you

Upload your resume. Four AI agents analyze your background, rank the faculty who fit, inspect their recent research, and help you draft outreach — grounded in their actual work, not templates.

Free to startNo credit cardCancel anytime
Top matches Balanced preset
Dr. Sarah Chen
Stanford · Interpretability · NLP
91
Dr. Marcus Holloway
MIT · Robotics · RL
84
Dr. Aisha Okonkwo
CMU · Fairness · HCI
82
Nova · Professor Researcher · re-ranking top 20…

Allison Hermann

Verified

Cornell University · Nutrition

Active 2007–2024

h-index20
Citations962
Papers6752 last 5y
Funding
See your match with Allison Hermann — sign in to PhdFit.Sign in

Research signals

Five dimensions sourced from public faculty / publication signals. Sign in to compare against your own profile and see your match score.

Research topics

  • Computer Science
  • Machine Learning
  • Artificial Intelligence
  • Obstetrics
  • Psychology
  • Clinical psychology
  • Medicine
  • Algorithm

Selected publications

  • Development and validation of a machine learning algorithm for predicting the risk of postpartum depression among pregnant women

    Journal of Affective Disorders · 2020 · 160 citations

    • Machine Learning
    • Computer Science
    • Artificial Intelligence

    OBJECTIVE: There is a scarcity in tools to predict postpartum depression (PPD). We propose a machine learning framework for PPD risk prediction using data extracted from electronic health records (EHRs). METHODS: Two EHR datasets containing data on 15,197 women from 2015 to 2018 at a single site, and 53,972 women from 2004 to 2017 at multiple sites were used as development and validation sets, respectively, to construct the PPD risk prediction model. The primary outcome was a diagnosis of PPD within 1 year following childbirth. A framework of data extraction, processing, and machine learning was implemented to select a minimal list of features from the EHR datasets to ensure model performance and to enable future point-of-care risk prediction. RESULTS: The best-performing model uses from clinical features related to mental health history, medical comorbidity, obstetric complications, medication prescription orders, and patient demographic characteristics. The model performances as measured by area under the receiver operating characteristic curve (AUC) are 0.937 (95% CI 0.912 - 0.962) and 0.886 (95% CI 0.879-0.893) in the development and validation datasets, respectively. The model performances were consistent when tested using data ending at multiple time periods during pregnancy and at childbirth. LIMITATIONS: The prevalence of PPD in the study data represented a treatment prevalence and is likely lower than the illness prevalence. CONCLUSIONS: EHRs and machine learning offer the ability to identify women at risk for PPD early in their pregnancy. This may facilitate scalable and timely prevention and intervention, reducing negative outcomes and the associated burden.

Frequent coauthors

  • Alyson Gorun

    Presbyterian Hospital

    46 shared
  • Yiye Zhang

    Weill Cornell Medicine

    42 shared
  • Jyotishman Pathak

    40 shared
  • Rochelle Joly

    Weill Cornell Medicine

    40 shared
  • Leah Susser

    Cornell University

    26 shared
  • Elizabeth Fitelson

    The Neurological Institute

    26 shared
  • Christian Umfrid

    Cornell University

    25 shared
  • MD Janna Gordon-Elliott

    Presbyterian Hospital

    25 shared
  • Resume-aware match score
  • Save to shortlist
  • AI-drafted outreach

See your match with Allison Hermann

PhdFit ranks faculty by your research interests, methods, and publications — grounded in their actual work, not templates.

  • Free to start
  • No credit card
  • 30-second signup