Correction to: In with the old, in with the new: machine learning for time to event biomedical research.
Author(s):
DOI: 10.1093/jamia/ocac243
Author(s):
DOI: 10.1093/jamia/ocac243
A previous study, PheMAP, combined independent, online resources to enable high-throughput phenotyping (HTP) using electronic health records (EHRs). However, online resources offer distinct quality descriptions of diseases which may affect phenotyping performance. We aimed to evaluate the phenotyping performance of single resource-based PheMAPs and investigate an optimized strategy for HTP.
Author(s): Wan, Nicholas C, Yaqoob, Ali A, Ong, Henry H, Zhao, Juan, Wei, Wei-Qi
DOI: 10.1093/jamia/ocac234
Progression of HIV disease, the transmission of the disease, and premature deaths among persons living with HIV (PLWH) have been attributed foremost to poor adherence to HIV medications. mHealth tools can be used to improve antiretroviral therapy (ART) adherence in PLWH and have the potential to improve therapeutic success.
Author(s): Schnall, Rebecca, Sanabria, Gabriella, Jia, Haomiao, Cho, Hwayoung, Bushover, Brady, Reynolds, Nancy R, Gradilla, Melissa, Mohr, David C, Ganzhorn, Sarah, Olender, Susan
DOI: 10.1093/jamia/ocac233
In long-term care (LTC) for older adults, interviews are used to collect client perspectives that are often recorded and transcribed verbatim, which is a time-consuming, tedious task. Automatic speech recognition (ASR) could provide a solution; however, current ASR systems are not effective for certain demographic groups. This study aims to show how data from specific groups, such as older adults or people with accents, can be used to develop an [...]
Author(s): Hacking, Coen, Verbeek, Hilde, Hamers, Jan P H, Aarts, Sil
DOI: 10.1093/jamia/ocac241
SNOMED CT is the largest clinical terminology worldwide. Quality assurance of SNOMED CT is of utmost importance to ensure that it provides accurate domain knowledge to various SNOMED CT-based applications. In this work, we introduce a deep learning-based approach to uncover missing is-a relations in SNOMED CT.
Author(s): Abeysinghe, Rashmie, Zheng, Fengbo, Bernstam, Elmer V, Shi, Jay, Bodenreider, Olivier, Cui, Licong
DOI: 10.1093/jamia/ocac248
Enabling clinicians to formulate individualized clinical management strategies from the sea of molecular data remains a fundamentally important but daunting task. Here, we describe efforts towards a new paradigm in genomics-electronic health record (HER) integration, using a standardized suite of FHIR Genomics Operations that encapsulates the complexity of molecular data so that precision medicine solution developers can focus on building applications.
Author(s): Dolin, Robert H, Heale, Bret S E, Alterovitz, Gil, Gupta, Rohan, Aronson, Justin, Boxwala, Aziz, Gothi, Shaileshbhai R, Haines, David, Hermann, Arthur, Hongsermeier, Tonya, Husami, Ammar, Jones, James, Naeymi-Rad, Frank, Rapchak, Barbara, Ravishankar, Chandan, Shalaby, James, Terry, May, Xie, Ning, Zhang, Powell, Chamala, Srikar
DOI: 10.1093/jamia/ocac246
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocac247
Sudden changes in health care utilization during the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) pandemic may have impacted the performance of clinical predictive models that were trained prior to the pandemic. In this study, we evaluated the performance over time of a machine learning, electronic health record-based mortality prediction algorithm currently used in clinical practice to identify patients with cancer who may benefit from early advance care planning conversations [...]
Author(s): Parikh, Ravi B, Zhang, Yichen, Kolla, Likhitha, Chivers, Corey, Courtright, Katherine R, Zhu, Jingsan, Navathe, Amol S, Chen, Jinbo
DOI: 10.1093/jamia/ocac221
To develop an automated deidentification pipeline for radiology reports that detect protected health information (PHI) entities and replaces them with realistic surrogates "hiding in plain sight."
Author(s): Chambon, Pierre J, Wu, Christopher, Steinkamp, Jackson M, Adleberg, Jason, Cook, Tessa S, Langlotz, Curtis P
DOI: 10.1093/jamia/ocac219
Machine learning (ML) has the potential to facilitate "continual learning" in medicine, in which an ML system continues to evolve in response to exposure to new data over time, even after being deployed in a clinical setting. In this article, we provide a tutorial on the range of ethical issues raised by the use of such "adaptive" ML systems in medicine that have, thus far, been neglected in the literature.
Author(s): Hatherley, Joshua, Sparrow, Robert
DOI: 10.1093/jamia/ocac218