1 |
Study of Pre-trained Language Models for Named Entity Recognition in Clinical Trial Eligibility Criteria from Multiple Corpora |
10.1109/ICHI52183.2021.00095 |
2021 |
To explore transformer-based models for clinical term extraction from eligibility criteria |
2 |
Accuracy of an Artificial Intelligence System for Cancer Clinical Trial Eligibility Screening: Retrospective Pilot Study |
10.2196/27767 |
2021 |
To evaluate Watson CDSS system for matching patients to clinical trials |
3 |
Extending the Query Language of a Data Warehouse for Patient Recruitment |
10.3233/978-1-61499-808-2-152 |
2017 |
To develop a data warehouse querying language for matching patient electronic health records with clinical trial eligibility criteria |
4 |
An Evaluation of Pretrained BERT Models for Comparing Semantic Similarity Across Unstructured Clinical Trial Texts |
10.3233/SHTI210848 |
2022 |
To evaluate the efficacy of BERT models in assessing semantic similarity of clinical trial descriptions |
5 |
Automated classification of eligibility criteria in clinical trials to facilitate patient-trial matching for specific patient populations |
10.1093/jamia/ocw176 |
2017 |
To develop automated classification methods for eligibility criteria to facilitate patient-trial matching for specific populations such as persons living with HIV or pregnant women. |
6 |
A Unified Machine Reading Comprehension Framework for Cohort Selection |
10.1109/JBHI.2021.3095478 |
2022 |
To develop a machine reading comprehension (MRC) framework for cohort selection and evaluate different MRC algorithms, in particular, the use of the cross-criteria attention. |
7 |
ASCOT: A text mining-based web-service for efficient search and assisted creation of clinical trials |
10.1186/1472-6947-12-S1-S3 |
2012 |
To develop an efficient search tool for filtering clinical trial descriptions. |
8 |
Cohort selection for clinical trials using deep learning models |
10.1093/jamia/ocz139 |
2019 |
To evaluate the efficiency of deep neural network architectures in cohort selection tasks. |
9 |
EliIE: An open-source information extraction system for clinical trial eligibility criteria |
10.1093/jamia/ocx019 |
2017 |
To develop a system for parsing free text clinical trial descriptions. |
10 |
Classifying Eligibility Criteria in Clinical Trials Using Active Deep Learning |
10.1109/ICMLA.2018.00052 |
2018 |
To automatically identify eligibility criteria that can be evaluated by patients without the help of medical professionals. |
11 |
Protocol Feasibility Workflow Using an Automated Multi-country Patient Cohort System |
10.3233/978-1-61499-432-9-985 |
2014 |
To build a system for querying patients eligible for clinical trial participation across many countries' registries. |
12 |
Assessing clinical trial eligibility with logic expression queries |
10.1016/j.datak.2007.07.005 |
2008 |
To extract semantic information reflecting eligibility criteria from clinical trial descriptions and formulate queries that can match criteria against medical data in patient records. |
13 |
Improving the efficiency of clinical trial recruitment using electronic health record data, natural language processing, and machine learning |
10.1002/art.41108 |
2019 |
To evaluate if ensemble machine learning algorithm can improve the efficiency of eligibility screening. |
14 |
Automatic trial eligibility surveillance based on unstructured clinical data |
10.1016/j.ijmedinf.2019.05.018 |
2019 |
To develop an algorithm for automatic identification of patients eligible for clinical trial participation. |
15 |
Information Extraction from Free Text in Clinical Trials with Knowledge-based Distant Supervision |
10.1109/COMPSAC.2019.00158 |
2019 |
To develop a method for extracting medical concepts from free text clinical trial descriptions. |
16 |
ETACTS: A method for dynamically filtering clinical trial search results |
10.1016/j.jbi.2013.07.014 |
2013 |
To evaluate the eTACTS system for advanced querying of clinical trial descriptions. |
17 |
A practical method for transforming free-text eligibility criteria into computable criteria |
10.1016/j.jbi.2010.09.007 |
2011 |
To develop a method of transforming free text eligibility criteria into a form suitable for SPARQL/SQL querying |
18 |
Evaluation of an artificial intelligence clinical trial matching system in Australian lung cancer patients |
10.1093/jamiaopen/ooaa002 |
2020 |
To evaluate the performance of IBM Watson for matching patients to clinical trials. |
19 |
Increasing the efficiency of trial-patient matching: automated clinical trial eligibility Pre-screening for pediatric oncology patients |
10.1186/s12911-015-0149-3 |
2015 |
To identify patients who meet core eligibility characteristics of an oncology clinical trial. |
20 |
An eligibility criteria query language for heterogeneous data warehouses |
10.3414/ME13-02-0027 |
2015 |
To develop a clinical-readable query language for heterogenous warehouses of medical information. |
21 |
DeepEnroll: Patient-Trial Matching with Deep Embedding and Entailment Prediction |
10.1145/3366423.3380181 |
2020 |
To develop a deep neural network for patient-trial matching using cross-modal representation of eligibility criteria and patient electronic health records. |
22 |
Improving Clinical Trial Participant Prescreening With Artificial Intelligence (AI): A Comparison of the Results of AI-Assisted vs Standard Methods in 3 Oncology Trials |
10.1177/2168479018815454 |
2018 |
To evaluate the efficacy of Mendel.ai in enrolling eligible patients in clinical trials. |
23 |
ExaCT: automatic extraction of clinical trial characteristics from journal publications |
10.1186/1472-6947-10-56 |
2010 |
To develop an information exctraction system for extracting key trial characteristics from full-text journal articles |
24 |
Building a specialized lexicon for breast cancer clinical trial subject eligibility analysis |
10.1177/1460458221989392 |
2021 |
To develop the specialized lexicon of medical terms. |
25 |
An OMOP CDM-Based Relational Database of Clinical Research Eligibility Criteria |
10.3233/978-1-61499-830-3-950 |
2017 |
To build a database of clinical trials for easy querying and filtering of trials using multiple criteria. |
26 |
An Ensemble Learning Strategy for Eligibility Criteria Text Classification for Clinical Trial Recruitment: Algorithm Development and Validation |
10.2196/17832 |
2020 |
To evaluate the efficacy of model ensembling in the task of eligibility criteria classification. |
27 |
Chia, a large annotated corpus of clinical trial eligibility criteria |
10.1038/s41597-020-00620-0 |
2020 |
To create a large annotated corpus of eligibility criteria extracted from clinical trial descriptions. |
28 |
Cohort selection for clinical trials using multiple instance learning |
10.1016/j.jbi.2020.103438 |
2020 |
To verify the usefulness of multiple instance learning paradigm in patient-trial matching task. |
29 |
Learning Eligibility in Cancer Clinical Trials Using Deep Neural Networks |
10.3390/app8071206 |
2018 |
To automatically predict whether short clinical statements were considered inclusion or exclusion criteria. |
30 |
Valx: A System for Extracting and Structuring Numeric Lab Test Comparison Statements from Text |
10.3414/ME15-01-0112 |
2016 |
To develop and evaluate an automated method for extracting and structuring numeric comparison statements in trial eligibility criteria text. |
31 |
EMR2vec: Bridging the gap between patient data and clinical trial |
10.1016/j.cie.2021.107236 |
2021 |
To develop a system for patient-trial matching. |
32 |
How the clinical research community responded to the COVID-19 pandemic: an analysis of the COVID-19 clinical studies in ClinicalTrials.gov |
10.1093/jamiaopen/ooab032 |
2021 |
To conduct a systematic analysis of clinical trials on COVID-19 |
33 |
DQueST: dynamic questionnaire for search of clinical trials |
10.1093/jamia/ocz121 |
2019 |
To develop a patient-trial matching system based on dynamic questionaire generation. |
34 |
Conflict discovery and analysis for clinical trials |
10.1145/3079452.3079494 |
2017 |
To match medical treatments to exclusion criteria in clinical trial text. |
35 |
COVID-19 trial graph: a linked graph for COVID-19 clinical trials |
10.1093/jamia/ocab078 |
2021 |
To create a graph database of structured and unstructured medical information fromm COVID-19 clinical trials |
36 |
Identifying the status of genetic lesions in cancer clinical trial documents using machine learning |
10.1186/1471-2164-13-S8-S21 |
2012 |
To develop a machine learning system for identifying mentions of genes and genetic lesions in cancer clinical trials. |
37 |
Parsing clinical trial eligibility criteria for cohort query by a multi-input multi-output sequence labeling model |
10.1101/2021.11.18.21266533 |
2021 |
To evaluate a sequence labeling model in parsing and extracting medical entities in eligibility criteria. |
38 |
Transformer-Based Named Entity Recognition for Parsing Clinical Trial Eligibility Criteria |
10.1145/3459930.3469560 |
2021 |
To extract named entities in eligibility criteria using transformer-based model. |
39 |
Cohort Selection for Clinical Trials From Longitudinal Patient Records: Text Mining Approach |
10.2196/15980 |
2019 |
To evaluate a system for patient-trial matching. |
40 |
Medical knowledge infused convolutional neural networks for cohort selection in clinical trials |
10.1093/jamia/ocz128 |
2019 |
To embed electronic health records using convolutional neural networks for better patient-trial matching. |
41 |
Semantic categorization of Chinese eligibility criteria in clinical trials using machine learning methods |
10.1186/s12911-021-01487-w |
2021 |
To extract semantic categories from eligibility criteria in Chinese clinical trials. |
42 |
Building an OMOP common data model-compliant annotated corpus for COVID-19 clinical trials |
10.1016/j.jbi.2021.103790 |
2021 |
To build an annotated dataset of eligibility criteria for COVID-19 clinical trials. |
43 |
Improving Disease Named Entity Recognition for Clinical Trial Matching |
10.1109/BIBM47256.2019.8983421 |
2019 |
To develop a named entity recognition model for clinical trial texts. |
44 |
Analysis of eligibility criteria representation in industry-standard clinical trial protocols |
10.1016/j.jbi.2013.06.001 |
2013 |
To develop a method of standarization of eligibility criteria across different clinical trial databases. |
45 |
Syntactic and Semantic Knowledge-Aware Paraphrase Detection for Clinical Data |
10.1007/978-981-16-2937-2_13 |
2022 |
To develop a knowledge-aware neural network model for paraphrase detection in eligibility criteria texts. |
46 |
Criteria2Query: A natural language interface to clinical databases for cohort definition |
10.1093/jamia/ocy178 |
2019 |
To develop a pipeline for eligibility criteria parsing and converting into CDM-based cohort queries. |
47 |
Textual inference for eligibility criteria resolution in clinical trials |
10.1016/j.jbi.2015.09.008 |
2015 |
To build a dataset of clinical texts annotated with eligibility criteria entailment. |
48 |
Inferring appropriate eligibility criteria in clinical trial protocols without labeled data |
10.1145/2390068.2390074 |
2012 |
To develop an unsupervised method of eligibility criteria identification in clinical trial texts. |
49 |
Formulating queries for assessing clinical trial eligibility |
10.1007/11765448_8 |
2006 |
To extract semantic information from eligibility criteria for better patient-trial matching. |
50 |
Numerical Eligibility Criteria in Clinical Protocols: Annotation, Automatic Detection and Interpretation |
10.1007/978-3-319-59758-4_22 |
2017 |
To create a model for the detection of complex numerical eligibility criteria in clinical trial texts. |
51 |
Automated learning of domain taxonomies from text using background knowledge |
10.1016/j.jbi.2016.09.002 |
2016 |
To create a framework for unsupervised ontology learning from clinical trial texts. |
52 |
Feasibility of Feature-based Indexing, Clustering, and Search of Clinical Trials |
10.3414/ME12-01-0092 |
2013 |
To explore the feasibility of feature-based indexing, clustering, and search of clinical trials. |
53 |
Predictive modeling of clinical trial terminations using feature engineering and embedding learning |
10.1038/s41598-021-82840-x |
2021 |
To predict clinical trial terminations and identify main factors influencing the terminations. |
54 |
Automated clinical trial eligibility prescreening: increasing the efficiency of patient identification for clinical trials in the emergency department |
10.1136/amiajnl-2014-002887 |
2015 |
To evaluate an automated eligibility screening approach to clinical trials using different machine learning methods. |
55 |
Supporting Patient Screening to Identify Suitable Clinical Trials |
10.3233/978-1-61499-432-9-823 |
2014 |
To develop a solution for flexible formalization of criteria and other trial metadata and for effective management of those representations |
56 |
Attention-Based LSTM Network for COVID-19 Clinical Trial Parsing |
10.1109/BigData50022.2020.9378451 |
2020 |
To investigate different versions of Att-BiLSTM models to extract entities from COVID-19 elgibility criteria |
57 |
Patterns for conflict identification in clinical trial eligibility criteria |
10.1109/HealthCom.2016.7749519 |
2016 |
To develop a method for automated identification of potential treatment conflicts between trials. |
58 |
Artificial Intelligence Tool for Optimizing Eligibility Screening for Clinical Trials in a Large Community Cancer Center |
10.1200/CCI.19.00079 |
2020 |
To evaluate the performance of WCTM tool in patient data intake and matching porcesses. |
59 |
Clinical Trial Information Extraction with BERT |
10.1109/ICHI52183.2021.00092 |
2021 |
To evaluate the effectiveness of BERT embeddings in medical information extraction. |
60 |
A knowledge base of clinical trial eligibility criteria |
10.1016/j.jbi.2021.103771 |
2021 |
To build a standardized knowledge base of elgibility criteria. |
61 |
Classification And Extraction Of Medical Clinical Trial Screening Standard Texts Based On Bi-Lstm And Attention Mechanism |
10.1088/1755-1315/632/5/052088 |
2021 |
To develop a model for eligibility criteria classification. |
62 |
Understanding Common Key Indicators Of Successful And Unsuccessful Cancer Drug Trials Using A Contrast Mining Framework On Clinicaltrials.Gov |
10.1016/j.jbi.2023.104321 |
2023 |
To evaluate the effectiveness of contrastive learning paradigm in the prediction of clinical trial success. |
63 |
A Comparative Study Of Pre-Trained Language Models For Named Entity Recognition In Clinical Trial Eligibility Criteria From Multiple Corpora |
10.1186/s12911-022-01967-7 |
2022 |
To compare multiple pre-trained language models in the task of named entity recognition in clinical trial descriptions. |
64 |
Improving Clinical Trial Design Using Interpretable Machine Learning Based Prediction Of Early Trial Termination |
10.1038/s41598-023-27416-7 |
2023 |
To inform clinical trial design using interpretable machine learning models for predicting early trial terminations. |
65 |
Combining Human And Machine Intelligence For Clinical Trial Eligibility Querying |
10.1093/jamia/ocac051 |
2022 |
To develop a system (Criteria2Query 2.0) for automatic conversion of eligibility criteria into cohort queries. |
66 |
A Scalable Ai Approach For Clinical Trial Cohort Optimization |
10.1007/978-3-030-93733-1_36 |
2021 |
To inform clinical trial design by automatic extraction of eligibility criteria. |
67 |
The Leaf Clinical Trials Corpus: A New Resource For Query Generation From Clinical Trial Eligibility Criteria |
10.1038/s41597-022-01521-0 |
2022 |
To build an annotated corpus of clinical trial eligibility criteria. |
68 |
Piloting An Automated Clinical Trial Eligibility Surveillance And Provider Alert System Based On Artificial Intelligence And Standard Data Models |
10.1186/s12874-023-01916-6 |
2023 |
To improve patient-trial matching by electronic health record normalization and to build efficient user interface for clinical trial selection. |
69 |
Hint: Hierarchical Interaction Network For Clinical-Trial-Outcome Predictions |
10.1016/j.patter.2022.100445 |
2022 |
To predict the success of a clinical trial using deep neural networks. |
70 |
Predicting Publication Of Clinical Trials Using Structured And Unstructured Data: Model Development And Validation Study |
10.2196/38859 |
2022 |
To develop a system for clinical trial publication |
71 |
Growth In Eligibility Criteria Content And Failure To Accrue Among National Cancer Institute (Nci)-Affiliated Clinical Trials |
10.1002/cam4.5276 |
2023 |
To investigate the impact of eligibility criteria on trial accrual and identify criteria assosiated with accrual failure |
72 |
Utilizing Large Language Models For Enhanced Clinical Trial Matching: A Study On Automation In Patient Screening |
10.7759/cureus.60044 |
2024 |
To apply LLMs for automatic trial aligibility screening. |
73 |
Autocriteria: A Generalizable Clinical Trial Eligibility Criteria Extraction System Powered By Large Language Models |
10.1093/jamia/ocad218 |
2024 |
To build an LLM-based tool for information extraction frm eligibility criteria without a need of labeled training data. |
74 |
Automatic Assessment Of Patient Eligibility By Utilizing Nlp And Rule-Based Analysis |
10.1109/EMBC40787.2023.10340494 |
2023 |
To develop a model for fully automatic selection of patients for clinical trials. |
75 |
Characterisation Of Digital Therapeutic Clinical Trials: A Systematic Review With Natural Language Processing |
10.1016/S2589-7500(23)00244-3 |
2024 |
To explore digital therapeutics clinical trials. |
76 |
Sociotechnical Feasibility Of Natural Language Processing-Driven Tools In Clinical Trial Eligibility Prescreening For Alzheimer'S Disease And Related Dementias |
10.1093/jamia/ocae032 |
2024 |
To assess feasibility of existing NLP tools for eligibility prescreening for AD trials. |
77 |
A Self-Learning Resource-Efficient Re-Ranking Method For Clinical Trials Search |
10.1145/3583780.3615174 |
2023 |
To develop a CT ranking method to facilitate trial search. |
78 |
Automated Matching Of Patients To Clinical Trials: A Patient-Centric Natural Language Processing Approach For Pediatric Leukemia |
10.1200/CCI.23.00009 |
2023 |
To create a patient-trial matching tool for pediatric leukemia. |
79 |
Effective Matching Of Patients To Clinical Trials Using Entity Extraction And Neural Re-Ranking |
10.1016/j.jbi.2023.104444 |
2023 |
To develop a method for clinical trial retrieval for the purpose of patient-trial matching |
80 |
Distilling Large Language Models For Matching Patients To Clinical Trials |
10.1093/jamia/ocae073 |
2024 |
To compare the efficacy of proprietary vs. open-source LLMs in patient-trial matching task. |
81 |
Named Entity Recognition and Normalization for Alzheimer's Disease Eligibility Criteria |
10.1109/ICHI57859.2023.00100 |
2023 |
To develop a pipeline for information extraction from AD clinical trial eligibility criteria. |
82 |
Criteria2Query 3.0: Leveraging Generative Large Language Models For Clinical Trial Eligibility Query Generation |
10.1016/j.jbi.2024.104649 |
2024 |
To create a tool leveraging LLMs for information extraction from eligbility criteria. |
83 |
Treement: Interpretable Patient-Trial Matching Via Personalized Dynamic Tree-Based Memory Network |
10.1145/3584371.3612998 |
2023 |
To develop a model for interpretable patient trial matching. |