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1.
Sci Rep ; 14(1): 19396, 2024 08 20.
Article in English | MEDLINE | ID: mdl-39169040

ABSTRACT

Climate change negative impacts on food production systems have forced large scale food producers to make available less healthy products. Although available on the markets, tomatoes are no more tasting as they used to be and providing fewer nutrients compared to then. This study investigates and compares the quality and yield of organic tomatoes (Solanum lycopersicum) produced in an insect net covered photovoltaic greenhouse against ambient production. Plant's physical characteristics were measured, yields and nutrient content were found at harvest, and environmental conditions (temperature, relative humidity, solar irradiance and CO2) were recorded. Plants grew as high as 160 cm inside the greenhouse under an average afternoon temperature of 30.71 °C and a vapor pressure deficit (VPD) of 1.88 kPa against outside plant growth of 72 cm height under averages of 36.04 °C and 3.05 kPa. Although, inside greenhouse tomatoes were physically more attractive and firm with two times healthier tomatoes (98%), 52.39% higher content in protein, 13.31% more minerals and 13.19% more dry matter than outside tomatoes, the yield from outside environment was 4.57 times higher than that of inside due to probably the used crop variety adapted to the harsh climate. Using a crop variety optimum for greenhouse, increasing ventilation and using better fertilizers with enough irrigation could help increase productivity while keeping high fruit quality inside the greenhouse, leading to healthier fruits for food security in the Sahel.


Subject(s)
Climate Change , Solanum lycopersicum , Solanum lycopersicum/growth & development , Organic Agriculture/methods , Temperature , Fruit/growth & development , Crops, Agricultural/growth & development
2.
Sci Rep ; 14(1): 11255, 2024 May 16.
Article in English | MEDLINE | ID: mdl-38755220

ABSTRACT

Anthropogenic climate change has caused worldwide extreme weather events including droughts, floods and heatwaves. It disproportionately affects developing countries through food insecurity. Greenhouse is important and relevant to the food-energy-water security in many regions. This study investigates the thermal behavior of photovoltaic evaporative cooling greenhouse made with eco-friendly coolers. The cooling potential of local plant materials was assessed under ambient conditions. Experimental thermal data obtained from optimized evaporative cooling system equipped with Hyphaene thebaica fibers (HF-pad) and conventional Celdek pad (C-pad), were used in heat and mass transfer equations to derive the greenhouse cooling performances. Computational fluid dynamics analysis software was used to investigate the refrigerant fluid distribution in the greenhouse. Cooler using HF-pad allows to keep the microclimate below 25 °C, with maximum moisture rate up to 80%, under harsh ambient conditions (temperature: 30-45 °C, humidity: 10-15%). HF-pad had the highest cooling coefficient of performance (COP = 9 against 6 for C-pad), the best cost to efficiency ratio (CER = 5; 4 times less than C-pad) and the lowest outlet temperature (20.0 °C). Due to higher outlet air velocity (1.116 m/s against 0.825 m/s for HF-pad), C-pad cooler spread cool air (20.5 °C) up to 1.25 m farther than its counterpart, creating higher pressure in the atmosphere (1.42 Pa against 0.71 Pa), with 2 times turbulent kinetic energy (0.014 J/kg). HF-pad presented cooling performances that compete with conventional pads. Moreover, optimization of HF-pad frame engineering and the technology scaling up to industrial level can allow better thermal and economic performances.

3.
JAAPA ; 37(4): 26-28, 2024 Apr 01.
Article in English | MEDLINE | ID: mdl-38531030

ABSTRACT

ABSTRACT: Atraumatic splenic rupture is rare and not often considered in the differential diagnosis for patients with abdominal pain. This article describes a patient with atraumatic splenic rupture complicated by a congenital splenorenal anomalous shunt. The congenital anomaly increases patient risk and the degree of surgical difficulty, even if it is identified preoperatively.


Subject(s)
Splenic Rupture , Humans , Splenic Rupture/diagnosis , Splenic Rupture/surgery , Splenectomy , Abdominal Pain/diagnosis , Diagnosis, Differential , Rupture, Spontaneous
4.
Prev Med Rep ; 35: 102330, 2023 Oct.
Article in English | MEDLINE | ID: mdl-37554352

ABSTRACT

Understanding how neighborhood environments are related to older adults' quality of life (QoL) and physical activity (PA) is important for public health actions on healthy ageing in sub-Saharan Africa. We examined associations of perceived neighborhood environment attributes with QoL among older adults in Nigeria and investigated the moderating effects of PA on these associations. We conducted a cross-sectional study of 353 older adults (mean age = 68.9 ± 9.1 years) selected from 5 high- and low-income communities in Maiduguri, Nigeria. QoL, attributes of the neighborhood environments and PA were self-reported using validated questionnaires. Multi-level models were used to examine the direct associations between neighborhood environment attributes and each of the four domains of QoL (physical health, psychological health, social relationships, and environmental health), as well as the moderating effects of leisure-time and total PA. Seven of nine neighborhood environment features were positively associated with multiple domains of QoL. Residential density, land-use diversity, land-use mix-access, walking infrastructure, traffic safety and 'overall walkability' were positively related to both or either physical health and environmental health QoL among those who are physically active. In contrast, walking infrastructure, traffic safety, and 'overall walkability' were negatively related to psychological health QoL among those not physically active. Our findings suggest being physically active moderates the association of neighborhood environments with QoL among Nigerian older adults. We suggest that designing age-friendly communities and simultaneously promoting PA may be needed to improve QoL and help prepare the Nigerian society for the predicted increase in the older adult population.

5.
J Behav Med ; 46(1-2): 253-275, 2023 04.
Article in English | MEDLINE | ID: mdl-35635593

ABSTRACT

Our study focused on the discovery of how vaccine hesitancy is framed in Twitter discourse, allowing us to recognize at-scale all tweets that evoke any of the hesitancy framings as well as the stance of the tweet authors towards the frame. By categorizing the hesitancy framings that propagate misinformation, address issues of trust in vaccines, or highlight moral issues or civil rights, we were able to empirically recognize their ontological commitments. Ontological commitments of vaccine hesitancy framings couples with the stance of tweet authors allowed us to identify hesitancy profiles for two most controversial yet effective and underutilized vaccines for which there remains substantial reluctance among the public: the Human Papillomavirus and the COVID-19 vaccines. The discovered hesitancy profiles inform public health messaging approaches to effectively reach Twitter users with promise to shift or bolster vaccine attitudes.


Subject(s)
COVID-19 , Social Media , Vaccines , Humans , COVID-19 Vaccines , Attitude to Health , Vaccination
6.
J Am Med Inform Assoc ; 30(2): 329-339, 2023 01 18.
Article in English | MEDLINE | ID: mdl-36394232

ABSTRACT

OBJECTIVE: The rapidly growing body of communications during the COVID-19 pandemic posed a challenge to information seekers, who struggled to find answers to their specific and changing information needs. We designed a Question Answering (QA) system capable of answering ad-hoc questions about the COVID-19 disease, its causal virus SARS-CoV-2, and the recommended response to the pandemic. MATERIALS AND METHODS: The QA system incorporates, in addition to relevance models, automatic generation of questions from relevant sentences. We relied on entailment between questions for (1) pinpointing answers and (2) selecting novel answers early in the list of its results. RESULTS: The QA system produced state-of-the-art results when processing questions asked by experts (eg, researchers, scientists, or clinicians) and competitive results when processing questions asked by consumers of health information. Although state-of-the-art models for question generation and question entailment were used, more than half of the answers were missed, due to the limitations of the relevance models employed. DISCUSSION: Although question entailment enabled by automatic question generation is the cornerstone of our QA system's architecture, question entailment did not prove to always be reliable or sufficient in ranking the answers. Question entailment should be enhanced with additional inferential capabilities. CONCLUSION: The QA system presented in this article produced state-of-the-art results processing expert questions and competitive results processing consumer questions. Improvements should be considered by using better relevance models and enhanced inference methods. Moreover, experts and consumers have different answer expectations, which should be accounted for in future QA development.


Subject(s)
COVID-19 , Information Storage and Retrieval , Humans , Communication , Pandemics , SARS-CoV-2 , Deep Learning
7.
Front Digit Health ; 4: 819228, 2022.
Article in English | MEDLINE | ID: mdl-35966142

ABSTRACT

Social media offers a unique opportunity to widely disseminate HPV vaccine messaging to reach youth and parents, given the information channel has become mainstream with 330 million monthly users in the United States and 4.2 billion users worldwide. Yet, a gap remains on how to adapt evidence-based vaccine interventions for the in vivo competitive social media messaging environment and what strategies to employ to make vaccine messages go viral. Push-pull and RE-AIM dissemination frameworks guided our adaptation of a National Cancer Institute video-based HPV vaccine cancer control program, the HPV Vaccine Decision Narratives, for the social media environment. We also aimed to understand how dissemination might differ across three platforms, namely Instagram, TikTok, and Twitter, to increase reach and engagement. Centering theory and a question-answer framework guided the adaptation process of segmenting vaccine decision story videos into shorter coherent segments for social media. Twelve strategies were implemented over 4 months to build a following and disseminate the intervention. The evaluation showed that all platforms increased following, but Instagram and TikTok outperformed Twitter on impressions, followers, engagement, and reach metrics. Although TikTok increased reach the most (unique accounts that viewed content), Instagram increased followers, engagement, and impressions the most. For Instagram, the top performer, six of 12 strategies contributed to increasing reach, including the use of videos, more than 11 hashtags, COVID-19 hashtags, mentions, and follow-for-follow strategies. This observational social media study identified dissemination strategies that significantly increased the reach of vaccine messages in a real-world competitive social media messaging environment. Engagement presented greater challenges. Results inform the planning and adaptation considerations necessary for transforming public health HPV vaccine interventions for social media environments, with unique considerations depending on the platform.

8.
J Biomed Inform ; 124: 103955, 2021 12.
Article in English | MEDLINE | ID: mdl-34800722

ABSTRACT

Enormous hope in the efficacy of vaccines became recently a successful reality in the fight against the COVID-19 pandemic. However, vaccine hesitancy, fueled by exposure to social media misinformation about COVID-19 vaccines became a major hurdle. Therefore, it is essential to automatically detect where misinformation about COVID-19 vaccines on social media is spread and what kind of misinformation is discussed, such that inoculation interventions can be delivered at the right time and in the right place, in addition to interventions designed to address vaccine hesitancy. This paper is addressing the first step in tackling hesitancy against COVID-19 vaccines, namely the automatic detection of known misinformation about the vaccines on Twitter, the social media platform that has the highest volume of conversations about COVID-19 and its vaccines. We present CoVaxLies, a new dataset of tweets judged relevant to several misinformation targets about COVID-19 vaccines on which a novel method of detecting misinformation was developed. Our method organizes CoVaxLies in a Misinformation Knowledge Graph as it casts misinformation detection as a graph link prediction problem. The misinformation detection method detailed in this paper takes advantage of the link scoring functions provided by several knowledge embedding methods. The experimental results demonstrate the superiority of this method when compared with classification-based methods, widely used currently.


Subject(s)
COVID-19 , Social Media , COVID-19 Vaccines , Communication , Humans , Pandemics , SARS-CoV-2 , Vaccination Hesitancy
9.
J Am Med Inform Assoc ; 27(10): 1556-1567, 2020 10 01.
Article in English | MEDLINE | ID: mdl-33029619

ABSTRACT

OBJECTIVE: We explored how knowledge embeddings (KEs) learned from the Unified Medical Language System (UMLS) Metathesaurus impact the quality of relation extraction on 2 diverse sets of biomedical texts. MATERIALS AND METHODS: Two forms of KEs were learned for concepts and relation types from the UMLS Metathesaurus, namely lexicalized knowledge embeddings (LKEs) and unlexicalized KEs. A knowledge embedding encoder (KEE) enabled learning either LKEs or unlexicalized KEs as well as neural models capable of producing LKEs for mentions of biomedical concepts in texts and relation types that are not encoded in the UMLS Metathesaurus. This allowed us to design the relation extraction with knowledge embeddings (REKE) system, which incorporates either LKEs or unlexicalized KEs produced for relation types of interest and their arguments. RESULTS: The incorporation of either LKEs or unlexicalized KE in REKE advances the state of the art in relation extraction on 2 relation extraction datasets: the 2010 i2b2/VA dataset and the 2013 Drug-Drug Interaction Extraction Challenge corpus. Moreover, the impact of LKEs is superior, achieving F1 scores of 78.2 and 82.0, respectively. DISCUSSION: REKE not only highlights the importance of incorporating knowledge encoded in the UMLS Metathesaurus in a novel way, through 2 possible forms of KEs, but it also showcases the subtleties of incorporating KEs in relation extraction systems. CONCLUSIONS: Incorporating LKEs informed by the UMLS Metathesaurus in a relation extraction system operating on biomedical texts shows significant promise. We present the REKE system, which establishes new state-of-the-art results for relation extraction on 2 datasets when using LKEs.


Subject(s)
Information Storage and Retrieval/methods , Knowledge Bases , Unified Medical Language System , Deep Learning
10.
J Biomed Inform ; 98: 103265, 2019 10.
Article in English | MEDLINE | ID: mdl-31470094

ABSTRACT

The identification of medical concepts, their attributes and the relations between concepts in a large corpus of Electroencephalography (EEG) reports is a crucial step in the development of an EEG-specific patient cohort retrieval system. However, the recognition of multiple types of medical concepts, along with the many attributes characterizing them is challenging, and so is the recognition of the possible relations between them, especially when desiring to make use of active learning. To address these challenges, in this paper we present the Self-Attention Concept, Attribute and Relation (SACAR) identifier, which relies on a powerful encoding mechanism based on the recently introduced Transformer neural architecture (Dehghani et al., 2018). The SACAR identifier enabled us to consider a recently introduced framework for active learning which uses deep imitation learning for its selection policy. Our experimental results show that SACAR was able to identify medical concepts more precisely and exhibited enhanced recall, compared with previous methods. Moreover, SACAR achieves superior performance in attribute classification for attribute categories of interest, while identifying the relations between concepts with performance competitive with our previous techniques. As a multi-task network, SACAR achieves this performance on the three prediction tasks simultaneously, with a single, complex neural network. The learning curves obtained in the active learning process when using the novel Active Learning Policy Neural Network (ALPNN) show a significant increase in performance as the active learning progresses. These promising results enable the extraction of clinical knowledge available in a large collection of EEG reports.


Subject(s)
Deep Learning , Electroencephalography , Medical Informatics/methods , Bayes Theorem , Brain/physiopathology , Cohort Studies , Electronic Data Processing , Epilepsy/diagnosis , Humans , Information Storage and Retrieval , Natural Language Processing , Neural Networks, Computer , Problem-Based Learning
11.
AMIA Jt Summits Transl Sci Proc ; 2019: 543-552, 2019.
Article in English | MEDLINE | ID: mdl-31259009

ABSTRACT

Incorporating the knowledge encoded in the Unified Medical Language System (UMLS) in deep learning methods requires learning knowledge embeddings from the knowledge graphs available in UMLS: the Metathesaurus and the Semantic Network. In this paper we present a technique using Generative Adversarial Networks (GANs) for learning UMLS embeddings and showcase their usage in a clinical prediction model. When the UMLS embeddings are available, the predictions improve by up to 6.9% absolute F1 score.

12.
Article in English | MEDLINE | ID: mdl-31141942

ABSTRACT

Previous studies have investigated the potential role of neighborhood walkability in reducing sedentary behavior. However, the majority of this research has been conducted in adults and Western developed countries. The purpose of the present study was to examine associations of neighborhood environmental attributes with sedentary time among older adults in Nigeria. Data from 353 randomly-selected community-dwelling older adults (60 years and above) in Maiduguri, Nigeria were analyzed. Perceived attributes of neighborhood environments and self-reported sedentary time were assessed using Nigerian-validated and reliable measures. Outcomes were weekly minutes of total sedentary time, minutes of sitting on a typical weekday, and minutes of sitting on a typical weekend day. In multivariate regression analyses, higher walkability index, proximity to destinations, access to services, traffic safety, and safety from crime were associated with less total sedentary time and sedentary time on both a weekday and a weekend day. Moderation analysis showed that only in men was higher walking infrastructure and safety found to be associated with less sedentary time, and higher street connectivity was associated with more sedentary time. The findings suggest that improving neighborhood walkability may be a mechanism for reducing sedentary time among older adults in Nigeria.


Subject(s)
Environment Design , Residence Characteristics , Sedentary Behavior , Walking , Aged , Female , Humans , Independent Living , Male , Middle Aged , Nigeria , Self Report
13.
AMIA Annu Symp Proc ; 2019: 627-636, 2019.
Article in English | MEDLINE | ID: mdl-32308857

ABSTRACT

Learning how to automatically align biomedical ontologies has been a long-standing goal, given their ever-growing content and the many applications that rely on them. Because the knowledge graphs underlying biomedical ontologies enable neural learning techniques to acquire knowledge embeddings as representations of these ontologies, neural learning can also consider ontology alignments. In this paper, we present the Knowledge-graph Alignment & Embedding Generative Adversarial Network (KAEGAN) which learns (a) to represent the relational knowledge from two distinct biomedical ontologies in the form of knowledge embeddings and (b) to use them for ontology alignment, by also relying on the ontology semantics. KAEGAN is a Generative Adversarial Network trained using bootstrapping to iteratively improve the learned alignments. Experimental results show promise, demonstrating that jointly learning ontology alignment and knowledge representation improves upon learning either in isolation.


Subject(s)
Biological Ontologies , Models, Theoretical , Neural Networks, Computer , Vocabulary, Controlled , Machine Learning , Semantics
14.
Physiother Theory Pract ; 35(3): 288-297, 2019 Mar.
Article in English | MEDLINE | ID: mdl-29474106

ABSTRACT

Introduction: Health promotion strategies grounded by evidence-based determinants of physical activity constitute an important focus of physiotherapy practice in the twenty-first century. This study investigated associations between neighborhood environmental factors and health-related moderate-to-vigorous physical activity (MVPA) and walking for transportation and recreation among community dwelling Nigerian older adults. Methods: A representative sample of 353 Nigerian older adults (age = 68.9 ± 9.13 years) in a cross-sectional survey provided self-reported min/week of MVPA and walking for transportation and recreation and perceived neighborhood environmental factors. Results: In multilevel linear regression analyses, proximity of destinations (ß = 3.291; CI = 0.392, 6.191), access to services and places (ß = 4.417; CI = 0.995, 7.838), esthetics (ß = 3.603; CI = 0.617, 6.590), traffic safety (ß = 5.685; CI = 3.334, 8.036), and safety from crime (ß = 1.717; CI = 0.466, 2.968) were related to more MVPA. Also, proximity of destinations (ß = 1.656; CI = 0.022, 3.291) and safety from crime (ß = 2.205; CI = 0.018, 4.579) were related to more transport walking. Access to services and places (ß = 2.086; CI = 0.713, 3.459) and walking infrastructure and safety (ß = 1.741; CI = 0.199, 3.282) were related to more recreational walking. Conclusions: Six of eight supportive environmental factors were associated with more physical activity among community dwelling older Nigerian adults. Policy makers including physiotherapists in this role can use the evidence to inform community-based physical activity and health promotion programs for older adults in Nigeria.


Subject(s)
Environment Design , Exercise , Residence Characteristics , Walking , Aged , Aged, 80 and over , Cross-Sectional Studies , Female , Humans , Male , Middle Aged , Nigeria , Self Report
15.
JAMIA Open ; 1(2): 265-275, 2018 Oct.
Article in English | MEDLINE | ID: mdl-30474078

ABSTRACT

OBJECTIVE: We explored how judgements provided by physicians can be used to learn relevance models that enhance the quality of patient cohorts retrieved from Electronic Health Records (EHRs) collections. METHODS: A very large number of features were extracted from patient cohort descriptions as well as EHR collections. The features were used to investigate retrieving (1) neurology-specific patient cohorts from the de-identified Temple University Hospital electroencephalography (EEG) Corpus as well as (2) the more general cohorts evaluated in the TREC Medical Records Track (TRECMed) from the de-identified hospital records provided by the University of Pittsburgh Medical Center. The features informed a learning relevance model (LRM) that took advantage of relevance judgements provided by physicians. The LRM implements a pairwise learning-to-rank framework, which enables our learning patient cohort retrieval (L-PCR) system to learn from physicians' feedback. RESULTS AND DISCUSSION: We evaluated the L-PCR system against state-of-the-art traditional patient cohort retrieval systems, and observed a 27% improvement when operating on EEGs and a 53% improvement when operating on TRECMed EHRs, showing the promise of the L-PCR system. We also performed extensive feature analyses to reveal the most effective strategies for representing cohort descriptions as queries, encoding EHRs, and measuring cohort relevance. CONCLUSION: The L-PCR system has significant promise for reliably retrieving patient cohorts from EHRs in multiple settings when trained with relevance judgments. When provided with additional cohort descriptions, the L-PCR system will continue to learn, thus offering a potential solution to the performance barriers of current cohort retrieval systems.

16.
Article in English | MEDLINE | ID: mdl-29888040

ABSTRACT

As medical science continues to advance, health care professionals and researchers are increasingly turning to clinical trials to obtain evidence supporting best-practice treatment options. While clinical trial registries such as Clinical-Trials.gov aim to facilitate these needs, it has been shown that many trials in the registry do not contain links to their published results. To address this problem, we present NCT Link, a system for automatically linking registered clinical trials to published MEDLINE articles reporting their results. NCT Link incorporates state-of-the-art deep learning and information retrieval techniques by automatically learning a Deep Highway Network (DHN) that estimates the likelihood that a MEDLINE article reports the results of a clinical trial. Our experimental results indicate that NCT Link obtains 30%-58% improved performance over previously reported automatic systems, suggesting that NCT Link could become a valuable tool for health care providers seeking to deliver best-practice medical care informed by evidence of clinical trials as well as (a) researchers investigating selective publication and reporting of clinical trial outcomes, and (b) study designers seeking to avoid unnecessary duplication of research efforts.

17.
AMIA Jt Summits Transl Sci Proc ; 2017: 156-165, 2018.
Article in English | MEDLINE | ID: mdl-29888063

ABSTRACT

The automatic identification of relations between medical concepts in a large corpus of Electroencephalography (EEG) reports is an important step in the development of an EEG-specific patient cohort retrieval system as well as in the acquisition of EEG-specific knowledge from this corpus. EEG-specific relations involve medical concepts that are not typically mentioned in the same sentence or even the same section of a report, thus requiring extraction techniques that can handle such long-distance dependencies. To address this challenge, we present a novel frame work which combines the advantages of a deep learning framework employing Dynamic Relational Memory (DRM) with active learning. While DRM enables the prediction of long-distance relations, active learning provides a mechanism for accurately identifying relations with minimal training data, obtaining an 5-fold cross validationF1 score of 0.7475 on a set of 140 EEG reports selected with active learning. The results obtained with our novel framework show great promise.

18.
AMIA Annu Symp Proc ; 2018: 1018-1027, 2018.
Article in English | MEDLINE | ID: mdl-30815145

ABSTRACT

Detecting negation in biomedical texts entails the automatic identification of negation cues (e.g. "never", "not", "no longer") as well as the scope of these cues. When medical concepts or terms are identified within the scope of a negation cue, their polarity is inferred as "negative". All the other concepts or words receive a positive polarity. Correctly inferring the polarity is essential for patient cohort retrieval systems, as all inclusion criteria need to be automatically assigned positive polarity, whereas exclusion criteria should receive negative polarity. Motivated by the recent development of techniques using deep learning, we have experimented with a neural negation detection technique and compared it against an existing neural polarity recognition system, which were incorporated in a patient cohort system operating on clinical electroencephalography (EEG) reports. Our experiments indicate that the neural negation detection method produces better patient cohorts then the polarity recognition method.


Subject(s)
Deep Learning , Electroencephalography , Information Storage and Retrieval , Natural Language Processing , Cohort Studies , Electronic Data Processing , Humans
19.
AMIA Jt Summits Transl Sci Proc ; 2017: 112-121, 2017.
Article in English | MEDLINE | ID: mdl-28815118

ABSTRACT

Secondary use1of electronic health records (EHRs) often relies on the ability to automatically identify and extract information from EHRs. Unfortunately, EHRs are known to suffer from a variety of idiosyncrasies - most prevalently, they have been shown to often omit or underspecify information. Adapting traditional machine learning methods for inferring underspecified information relies on manually specifying features characterizing the specific information to recover (e.g. particular findings, test results, or physician's impressions). By contrast, in this paper, we present a method for jointly (1) automatically extracting word- and report-level features and (2) inferring underspecified information from EHRs. Our approach accomplishes these two tasks jointly by combining recent advances in deep neural learning with access to textual data in electroencephalogram (EEG) reports. We evaluate the performance of our model on the problem of inferring the neurologist's over-all impression (normal or abnormal) from electroencephalogram (EEG) reports and report an accuracy of 91.4% precision of 94.4% recall of 91.2% and F1 measure of 92.8% (a 40% improvement over the performance obtained using Doc2Vec). These promising results demonstrate the power of our approach, while error analysis reveals remaining obstacles as well as areas for future improvement.

20.
AMIA Jt Summits Transl Sci Proc ; 2017: 229-238, 2017.
Article in English | MEDLINE | ID: mdl-28815135

ABSTRACT

The annotation of a large corpus of Electroencephalography (EEG) reports is a crucial step in the development of an EEG-specific patient cohort retrieval system. The annotation of multiple types of EEG-specific medical concepts, along with their polarity and modality, is challenging, especially when automatically performed on Big Data. To address this challenge, we present a novel framework which combines the advantages of active and deep learning while producing annotations that capture a variety of attributes of medical concepts. Results obtained through our novel framework show great promise.

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