Erratum to: The complex case of EHRs: examining the factors impacting the EHR user experience.
Author(s): Tutty, Michael A, Carlasare, Lindsey E, Lloyd, Stacy, Sinsky, Christine A
DOI: 10.1093/jamia/ocz129
Author(s): Tutty, Michael A, Carlasare, Lindsey E, Lloyd, Stacy, Sinsky, Christine A
DOI: 10.1093/jamia/ocz129
Identifying patients who meet selection criteria for clinical trials is typically challenging and time-consuming. In this article, we describe our clinical natural language processing (NLP) system to automatically assess patients' eligibility based on their longitudinal medical records. This work was part of the 2018 National NLP Clinical Challenges (n2c2) Shared-Task and Workshop on Cohort Selection for Clinical Trials.
Author(s): Chen, Long, Gu, Yu, Ji, Xin, Lou, Chao, Sun, Zhiyong, Li, Haodan, Gao, Yuan, Huang, Yang
DOI: 10.1093/jamia/ocz109
This article presents a novel method of semisupervised learning using convolutional autoencoders for optical endomicroscopic images. Optical endomicroscopy (OE) is a newly emerged biomedical imaging modality that can support real-time clinical decisions for the grade of dysplasia. To enable real-time decision making, computer-aided diagnosis (CAD) is essential for its high speed and objectivity. However, traditional supervised CAD requires a large amount of training data. Compared with the limited number of [...]
Author(s): Tong, Li, Wu, Hang, Wang, May D
DOI: 10.1093/jamia/ocz089
Clinical genome sequencing laboratories return reports containing clinical testing results, signed by a board-certified clinical geneticist, to the ordering physician. This report is often a PDF, but can also be a paper copy or a structured data file. The reports are frequently modified and reissued due to changes in variant interpretation or clinical attributes.
Author(s): Venner, Eric, Murugan, Mullai, Hale, Walker, Jones, Jordan M, Lu, Shan, Yi, Victoria, Gibbs, Richard A
DOI: 10.1093/jamia/ocz107
HIV infection risk can be estimated based on not only individual features but also social network information. However, there have been insufficient studies using n machine learning methods that can maximize the utility of such information. Leveraging a state-of-the-art network topology modeling method, graph convolutional networks (GCN), our main objective was to include network information for the task of detecting previously unknown HIV infections.
Author(s): Xiang, Yang, Fujimoto, Kayo, Schneider, John, Jia, Yuxi, Zhi, Degui, Tao, Cui
DOI: 10.1093/jamia/ocz070
Natural language processing (NLP) engines such as the clinical Text Analysis and Knowledge Extraction System are a solution for processing notes for research, but optimizing their performance for a clinical data warehouse remains a challenge. We aim to develop a high throughput NLP architecture using the clinical Text Analysis and Knowledge Extraction System and present a predictive model use case.
Author(s): Afshar, Majid, Dligach, Dmitriy, Sharma, Brihat, Cai, Xiaoyuan, Boyda, Jason, Birch, Steven, Valdez, Daniel, Zelisko, Suzan, Joyce, Cara, Modave, François, Price, Ron
DOI: 10.1093/jamia/ocz068
Track 1 of the 2018 National NLP Clinical Challenges shared tasks focused on identifying which patients in a corpus of longitudinal medical records meet and do not meet identified selection criteria.
Author(s): Stubbs, Amber, Filannino, Michele, Soysal, Ergin, Henry, Samuel, Uzuner, Özlem
DOI: 10.1093/jamia/ocz163
The goal of the 2018 n2c2 shared task on cohort selection for clinical trials (track 1) is to identify which patients meet the selection criteria for clinical trials. Cohort selection is a particularly demanding task to which natural language processing and deep learning can make a valuable contribution. Our goal is to evaluate several deep learning architectures to deal with this task.
Author(s): Segura-Bedmar, Isabel, Raez, Pablo
DOI: 10.1093/jamia/ocz139
We sought to demonstrate applicability of user stories, progressively elaborated by testable acceptance criteria, as lightweight requirements for agile development of clinical decision support (CDS).
Author(s): Kannan, Vaishnavi, Basit, Mujeeb A, Bajaj, Puneet, Carrington, Angela R, Donahue, Irma B, Flahaven, Emily L, Medford, Richard, Melaku, Tsedey, Moran, Brett A, Saldana, Luis E, Willett, Duwayne L, Youngblood, Josh E, Toomay, Seth M
DOI: 10.1093/jamia/ocz123
Automated clinical phenotyping is challenging because word-based features quickly turn it into a high-dimensional problem, in which the small, privacy-restricted, training datasets might lead to overfitting. Pretrained embeddings might solve this issue by reusing input representation schemes trained on a larger dataset. We sought to evaluate shallow and deep learning text classifiers and the impact of pretrained embeddings in a small clinical dataset.
Author(s): Oleynik, Michel, Kugic, Amila, Kasáč, Zdenko, Kreuzthaler, Markus
DOI: 10.1093/jamia/ocz149