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1 le to a wide range of problems in biomedical text mining.
2 ions of biomedical information retrieval and text mining.
3 data are created with support from automated text mining.
4 rtant problem within the field of biomedical text mining.
5 ial for developing and evaluating biomedical text mining.
6 s source code or web services for biomedical text mining.
7 tains a wealth of information for meaningful text mining.
8 n source software tool for molecular biology text mining.
9 rtant information sources for bioinformatics text mining.
10  c-means clustering algorithm for biomedical text mining.
11 owledge base about problematic antibodies by text mining.
12 rom scientific literature by using automated text mining.
13 te the research on document-level biomedical text mining.
14 ecognition (NER) is a key task in biomedical text mining.
15 nd rich features largely based on biomedical text mining.
16 pportunity of using "big data" in biomedical text mining.
17 ous cells and animal models recorded through text-mining.
18         It remains unclear, however, whether text mining actually benefits from documented synonymy a
19 RCancer, is updated regularly by running the text mining algorithm against PubMed.
20                       This work presents our text mining algorithm and demonstrates its use to uncove
21 nd primary GPCR resources using an automated text mining algorithm combined with manual validation, w
22                          More generally, our text mining algorithm may be used to uncover information
23                                        A new text-mining algorithm was proposed to collect GPCR-ligan
24 ces on such a large scale, however, requires text mining algorithms that can recognize when different
25 ing equipped with multiple challenge-winning text mining algorithms to ensure the quality of its auto
26 are, using natural language processing-based text mining algorithms.
27                                              Text-mining algorithms that were previously validated to
28                                              Text-mining algorithms were used to derive cumulative do
29 ibed within CSS and conduct bibliometric and text mining analyses to characterize articles that refer
30                       We applied data-driven text mining analyses to the "Methods" and "Results" sect
31 emonstrated by a drug interaction extraction text mining analysis.
32                                    Automated text-mining analysis was performed to extract data on P
33  we propose a novel approach that integrates text mining and automated reasoning to derive DDIs.
34     In conclusion, using a focused automated text mining and curation approach with experimental and
35 ith the mammalian circulating system through text mining and database fusion.
36 ion extraction as an enabling technology for text mining and given also the ready adaptability of sys
37 ucial for many important tasks in biomedical text mining and information retrieval.
38 rate semantic classification is valuable for text mining and knowledge-based tasks that perform infer
39          These resources can help streamline text mining and meta-science projects and make text mini
40 , we employed network pharmacology including text mining and molecular docking to identify the potent
41                   This study, using advanced text mining and multiple deep learning algorithms, utili
42               In this cross-sectional study, text mining and natural language processing techniques a
43  We introduce an automatic approach based on text mining and network analysis to predict gene-disease
44 antage of principles in image understanding, text mining and optical character recognition (OCR) to r
45                             We then employed text mining and PubChem crowdsourcing to associate phras
46 e were predicted by serum pharmacochemistry, text mining and similarity match.
47 textual data, combining methods and tools of text mining and social network analysis.
48 e to extract microRNA-cancer associations by text mining and store them in a database called miRCance
49 ARTICIPANTS: This cross-sectional study used text mining and the linking of data from electronic heal
50                   In this article, we employ text mining and word cloud analysis techniques to addres
51 ent additions include integration of various text-mining and biodatabase plugins, demonstrating the s
52                              Using automated text-mining and expert (human) curation we have systemat
53 Manually annotated data is key to developing text-mining and information-extraction algorithms.
54 e constructed an AAgAtlas database 1.0 using text-mining and manual curation.
55 dence with results from logistic regression, text-mining and molecular-level measures for comorbiditi
56  enhance their comprehension of lncRNAs from text mining, and also saving their time.
57 of manual literature curation, computational text mining, and genome analysis.
58 ioRAT is a Biological Research Assistant for Text mining, and incorporates a document search ability
59  existing resources for literature searches, text mining, and large-scale prediction of physicochemic
60 This article introduces the concept of Agile text mining, and presents the PubAnnotation ecosystem as
61  open-source data sets through web crawling, text mining, and social media analytics, primarily in th
62                                         Many text mining applications depend on accurate named entity
63          A variety of methods for evaluating text mining applications exist, including corpora, struc
64 The integration with FDA drug labels enables text mining applications for drug adverse events and cli
65 nd their subsequent annotation together with text mining applications for linking chemistry with biol
66 l literature is critical for many downstream text mining applications in both research and real-world
67 well as can be utilised to develop efficient text mining applications on cell types and cell lines.
68 sources that have been introduced to support text mining applications over the COVID-19 literature; s
69 nguistic structure are relevant for building text mining applications.
70 c classification and for building biomedical text mining applications.
71  body parts are crucial for building medical text mining applications.
72 stream bioinformatics studies and biomedical text-mining applications.
73 related discovery and innovation (LRDI) is a text mining approach for bridging unconnected discipline
74 s codes with deeper clinical data, we used a text mining approach to extract symptoms from free text
75 re curation supported by a focused automated text mining approach to identify genes involved in 5 KEs
76       In this study, we present an automated text mining approach using Latent Semantic Indexing (LSI
77                      A novel self-supervised text mining approach, leveraging bidirectional encoder r
78                                Utilizing the text mining approach, the proposed method leverages the
79 sis of functional annotations using a simple text mining approach.
80                 Here we present an automated text-mining approach as a form of meta-analysis to exami
81                     Here, we report tmVar, a text-mining approach based on conditional random field (
82       Here, we report the results of a novel text-mining approach that extracts DNA sequences from bi
83                          We apply a semantic text-mining approach to identify the phenotypes (signs a
84                          We have also used a text-mining approach to search for microRNA gene names i
85 n literature, which urges the development of text mining approaches to facilitate the process by auto
86 ubMed and extraction of words with different text mining approaches, and (ii) interactive analysis an
87    So, we have explored the effectiveness of text-mining approaches and developed optimizations to fi
88 in interaction extraction) relatively simple text-mining approaches can prove surprisingly effective.
89                                     Existing text-mining approaches focus on finding gene names or id
90 navigate the literature and has incorporated text-mining approaches to semantically enrich content an
91 m biomedical literature, existing biomedical text-mining approaches typically formulate the problem a
92  to expedite curation through semi-automated text-mining approaches, and to enhance curation quality
93 score of 0.67, which we increased to 0.88 by text-mining article excerpts surrounding the mentioning
94 uncertainty being acknowledged in biomedical text mining as an attribute of text mined interactions (
95 ssification systems based on high-throughput text-mining as well as on a hierarchical clustering of t
96      LAITOR4HPC can be used for an efficient text mining based construction of biological networks de
97 rane accidents were firstly identified using text mining based on 203 accidents that occurred from 20
98 ndom forest based retention time prediction, text-mining based false positive removal/true positive r
99 m classification of scientific literature by text mining-based classification of article abstracts.
100 a and information collection by implementing text mining-based classification of primary biomedical l
101 s and then turns them into queries for three text mining-based MEDLINE literature search systems.
102 dation and disease association using a novel text-mining-based machine learning approach.
103 esentations from transformers for biomedical text mining (BioBERT) for span detection along with the
104 a, chromatograms, or images in styles new to text mining but familiar to analytical chemistry.
105 perspectives: it allows the reformulation of text mining by biomedical researchers from the task of a
106 otential to significantly advance biomedical text mining by providing a high-quality gold standard fo
107                                              Text mining can yield valuable insights from unstructure
108 , we tackled this challenge by deploying the text-mining capacities of large language models to proce
109 biomedical researchers, biocurators, and the text mining community working on biomedical relationship
110 reserving two sets of 15 articles for future text-mining competitions (after which these too will be
111 actors and crane accident chain by combining text mining, complex network and integrated interpretive
112 lable, hereby stimulating the application of text mining data in future plant biology studies.
113 tion between proteins and diseases, based on text mining data processed from scientific literature.
114          Previous research in the biomedical text-mining domain has historically been limited to titl
115 ata Bank, Europe (PDBe), we demonstrate that text mining doubles the number of structured annotations
116 e a computational-experimental approach with text mining-enhanced quantitative proteomics.
117   We corroborated our findings by literature text-mining, expert validation, and recapitulation in mo
118                              Applications of text mining fall both into the category of T1 translatio
119 stical filtering of GWAS results followed by text-mining filtering revealed relationships between ADG
120 n statistical filtering of GWAS results, and text-mining filtering using Gene Relationships Across Im
121           We conclude that the deployment of text mining for document abstraction or rich search and
122 s should encourage much wider exploration of text mining for implicit information among the general s
123 ering (BSQA) system that performs integrated text mining for insect biology, covering diverse aspects
124 f drug discovery.These opportunities include text mining for new drug leads, modeling molecular pathw
125                  These opportunities include text mining for new drug leads, modeling molecular pathw
126 tudy, we assess the potential of large-scale text mining for plant biology research in general and fo
127                                              Text mining for translational bioinformatics is a new fi
128 een clinical terms is an important aspect of text mining from electronic health records, which are in
129                    Research into event-based text mining from the biomedical literature has been grow
130 rches for the community, we conducted manual text-mining from published literature and built a databa
131                                  Interest in text mining full-text biomedical research articles is gr
132                                    Automated text mining has been widely used in recreating protein i
133                 This highlights the value of text-mining hospital letters to replace the national abs
134            We employed a suite of biomedical text mining (i.e. named-entity) approaches to identify m
135                                              Text mining identified 4,572,043 P values in 1,608,736 M
136                                              Text mining identified code sharing in 98 (2%) articles,
137     The theme of the workshop was 'Roles for text mining in biomedical knowledge discovery and transl
138 e cases demonstrate the usefulness of miRTex text mining in the analysis of miRNA-regulated biologica
139                                              Text mining in the biomedical domain aims at helping res
140                                              Text mining in the biomedical field has received much at
141                      Furthermore, we combine text mining information with both protein-protein and re
142 ponent that can be used in the interoperable text mining infrastructure, U-Compare.
143 ectious diseases through in-depth literature text-mining, integrated outbreak metadata, outbreak surv
144                                   Biomedical text mining is a technique that extracts essential infor
145                                          The text mining is based on 75 rules we have constructed, wh
146                                              Text mining is increasingly used in the biomedical domai
147 massive growth of the scientific literature, text mining is increasingly used to extract biological p
148                                              Text mining is increasingly used to manage the accelerat
149                             One challenge in text mining is linking ambiguous word forms to unambiguo
150                                              Text mining is one promising way of extracting informati
151             One important task in biomedical text mining is relation extraction, which aims to identi
152                       Research in biomedical text mining is starting to produce technology which can
153 strate that an algorithm originally used for text mining, latent Dirichlet allocation, can be adapted
154 g such information have been proposed in the text mining literature.
155                                              Text mining may provide useful tools to assist in the cu
156  automated brain-mapping framework that uses text-mining, meta-analysis and machine-learning techniqu
157                                 We suggest a text mining method for efficient corpus-based term acqui
158  environments in the past 35 years using the text mining method, which allows us to discover patterns
159 s of Cancer taxonomy and developed automatic text mining methodology and a tool (CHAT) capable of ret
160          However, only recently has advanced text mining methodology been implemented with sufficient
161                  We present a new corpus and Text Mining methodology that can accurately identify and
162         In this study, we developed tailored text mining methods and analyzed 29 188 papers published
163 d in Vitro in biomedical literature by using text mining methods and present our results.
164 ionally mine the literature for such events, text mining methods that can detect, extract and annotat
165  of biomedical networks and models, aided by text mining methods that provide evidence from literatur
166 s, this result has significance for clinical text mining more generally, though further work to confi
167                                              Text-mining mutation information from the literature bec
168 eering to guide ChatGPT in the automation of text mining of metal-organic framework (MOF) synthesis c
169 cinous and non-mucinous samples, integrating text mining of pathology reports, gene expression, methy
170 corpus is a highly valuable resource for the text mining of pharmacokinetics parameters and drug inte
171 Pub includes 2767 fusion genes obtained from text mining of PubMed abstracts.
172  Technology is needed to perform large-scale text mining of research papers to extract the reported a
173                   Previously, we showed that text mining of residues in freely available PubMed abstr
174                                              Text mining of sequence annotations allows position spec
175 xt mining and meta-science projects and make text mining of the biomedical literature more accessible
176                             We show that the text mining of the clinical notes was able to complement
177 , benchmarking alignment tools and continued text mining of the extensive literature on transcription
178                                  Through the text mining of the publication record of multiple diseas
179 ), by incorporating past medical history and text-mining of electronic medical records.
180 dels presents an opportunity to speed up the text-mining of protein activities for biocuration.
181 tive signals across genomes, (iii) automated text-mining of the scientific literature and (iv) comput
182 KB/Swiss-Prot format, which would facilitate text-mining of UniProtKB/Swiss-Prot.
183 ms a series of advanced image processing and text mining operations to comprehensively extract the se
184  or for evidence gathering methods involving text mining or data mining.
185 ed to evaluate GO predictions generated from text mining or protein interaction experiments.
186 signed for the purpose of active learning in text mining, our method achieves significant improvement
187    Our work demonstrates the usefulness of a text mining pipeline in facilitating complex research ta
188 hus motivated to develop Autism_genepheno, a text mining pipeline to identify sentence-level mentions
189 ds In this retrospective study, a rule-based text mining pipeline was developed to extract descriptor
190 y high precision and high-throughput of this text-mining pipeline makes this activity possible both a
191                      We used a sophisticated text-mining pipeline to extract 1.15 million unique whol
192                                 Conventional text mining pipelines provide tools to automatically ext
193                This task can be considered a text mining problem that requires reading a lot of acade
194                         Lipid Mini-On uses a text-mining process to bin individual lipid names into m
195 w implementing three different processes for text mining, programmed by ChatGPT itself.
196                                              Text mining provides the necessary means to retrieve the
197 ty journals in infectious diseases using the text-mining R package, rtransparent.
198                      Increasingly biological text mining research is focusing on the extraction of co
199 ortant yet highly complex task in biomedical text mining research, as gene names can be highly ambigu
200 s in text is an important task in biomedical text mining research, facilitating for instance the iden
201 with other normalization tasks in biomedical text mining research.
202 ext remains a challenging task in biomedical text mining research.
203                                              Text-mining research in the biomedical domain has been m
204                                              Text mining researchers and others may download and use
205  Engineering strategy to instruct ChatGPT in text mining, resulting in impressive precision, recall,
206 NSC), analysis of annotations and literature text mining, reveals previously unappreciated tumor subc
207            There are two basic approaches to text mining: rule-based, also known as knowledge-based;
208 ccurrence, enzyme/disease relationships from text mining, sequences and 3D structures from other data
209 report here our recently developed web-based text mining services for biomedical concept recognition
210 terature-database relationships are found by text mining, since these relationships are also not pres
211 e all translational bioinformatics software, text mining software for translational bioinformatics ca
212                                  Unlike most text-mining software tools, our web services integrate s
213  could serve as a gold standard to benchmark text mining solutions.
214 es PubMed (29 million abstracts) and the PMC Text Mining subset (3 million full text articles).
215 t annotated rare disease corpus from the PMC Text Mining subset.
216 intensive, the development of semi-automated text mining support is hindered by unavailability of tra
217 ology in particular using a state-of-the-art text mining system applied to all PubMed abstracts and P
218 aunched in 2008 to provide an ontology-based text mining system for early disease detection from open
219         In this paper, we describe miRTex, a text mining system that extracts miRNA-target relations,
220                 We developed and evaluated a text mining system, MutD, which extracts protein mutatio
221 ms, is based on an extension of our in-house text-mining system, SciMiner.
222 om the biomedical literature using the eGIFT text-mining system.
223                                              Text mining systems aim at knowledge discovery from text
224  automated annotations from state-of-the-art text mining systems for genes/proteins, genetic variants
225                                     Multiple text mining systems have been developed, but most of the
226               To allow easy integration into text mining systems, EventMine-MK is provided as a UIMA
227 d text annotations specifically prepared for text mining systems.
228 itate the development of advanced biomedical text mining systems.
229 arly of gene symbols, is a big challenge for text-mining systems in the biomedical domain.
230 d as a component to be integrated with other text-mining systems, as a framework to add user-specific
231 ne GUI application, or integrated into other text-mining systems.
232  identification is an important step in many text mining tasks aiming to extract useful information f
233 ing as a necessary foundation for downstream text mining tasks and applications such as information e
234 nique that can support a range of Biomedical Text Mining tasks and can help readers of biomedical lit
235 shows SOTA performance on several biomedical text mining tasks when compared to existing publicly ava
236 ing results and proved useful for biomedical text mining tasks.
237 art (SOTA) performance on various biomedical text mining tasks.
238 nalysis of large batches of data, performing text-mining tasks and the casual or systematic evaluatio
239 into these categories can benefit many other text-mining tasks.
240                  We demonstrated that DTM, a text mining technique, can be a powerful computational a
241     Information structure (IS) analysis is a text mining technique, which classifies text in biomedic
242  has made it impossible to determine whether text mining techniques are sufficiently mature to be use
243                                    Automated text mining techniques for searching, reading and summar
244 modeling is one of the popular methods among text mining techniques used to discover hidden semantic
245 ur objective was to illustrate how combining text mining techniques with statistical methodologies ca
246                                              Text mining techniques, which involve the processes of i
247                                   We applied text-mining techniques to identify 27 individual studies
248                We have applied computational text-mining techniques to parse and map mutagenesis and
249           The development and application of text mining technologies has been proposed as a way of d
250                                              Text mining technologies have been shown to reduce the l
251 d a new annotation interface that integrates text mining technologies.
252 ble by manual curation or sophisticated text text-mining technology to extract the relevant informati
253 ation is a fundamental problem in biomedical text mining that aims to generate ideas that are new, in
254 ze promising results and open challenges for text mining the COVID-19 literature.
255                                              Text mining the electronic health records of 14,017 pati
256         Recently, in the field of biomedical text mining, the development and enhancement of event-ba
257             Hence, there is much interest in text mining, the use of computational tools to enhance t
258                                 Most current text mining (TM) approaches to extract information about
259                                              Text mining (TM) is efficient in extracting information
260                                              Text-mining (TM) solutions are developing into efficient
261 future paths of AI in healthcare by applying text mining to collect scientific papers and patent info
262     These results demonstrate the ability of text mining to contribute to the ongoing debate about th
263 tomics datasets of human asthma, followed by text mining to evaluate functional marker relevance of d
264 ere is a considerable discrepancy when using text mining to extract bio-entities related to eczema or
265                        In this study, we use text mining to extract information from the descriptions
266 asets overdue for public release by applying text mining to identify dataset references in published
267 , describing our first steps into the use of text mining to identify protein-related entities, the la
268 omputational method that applies statistical text mining to PubMed abstracts, to score these 179 loci
269  in November 2015 using machine learning and text mining to reduce the screening for inclusion worklo
270 -developed areas of research, we applied the text mining to structural modeling of protein-protein co
271                                  Here we use text mining to study 15,311 research papers in which mic
272        We describe CRAB - a fully integrated text mining tool designed to support chemical health ris
273 or time- and cost-effective development of a text mining tool for expansion of controlled vocabularie
274 an HPC-oriented version of PESCADOR's native text mining tool, renamed to LAITOR4HPC, aiming to acces
275                        We developed ViMRT, a text-mining tool and search engine for automated virus m
276 address this issue we developed OncoScore, a text-mining tool that ranks genes according to their ass
277          With the assistance of the PubTator text-mining tool, we tagged more than 10 000 articles to
278 t quality databases require manual curation, text mining tools can facilitate the curation process, i
279                                              Text mining tools configure an essential approach to bui
280 tics corpus, it will be difficult to develop text mining tools for pharmacokinetics data collection f
281                 A number of freely available text mining tools have been put together to extract high
282                     Most currently available text mining tools share two characteristics that make th
283 ces for the rapid development of large-scale text mining tools targeting complex biological informati
284      However, to date there are no available text mining tools that offer high-accuracy performance f
285 online web server based on LAITOR and NLProt text mining tools, which retrieves protein-protein co-oc
286 ng need to assist biocuration with automated text mining tools.
287 g as useful tools for integrating biomedical text mining tools.
288   Previous studies have shown that automated text-mining tools are becoming increasingly important fo
289                                     Emerging text-mining tools can help by identifying topics and dis
290                                              Text-mining tools have rapidly matured: although not per
291                                      We used text-mining tools to extract biological entities associa
292  most common cases that remain difficult for text-mining tools.
293                      We conducted full-scale text mining using miRTex to process all the Medline abst
294      Furthermore, with the data set built by text mining, we constructed a machine-learning model wit
295 ntity recognition is critical for biomedical text mining, where it is not unusual to find entities la
296 y emerging computational approaches based on text mining which offer a great opportunity to organize
297                            Here, we combined text mining with a systematic review and formed a catalo
298 lenge, our study demonstrates that combining text mining with language model-based processing can gen
299 eatures of semantic database integration and text mining with methods for graph-based analysis.
300 l mismatches between the assumptions of much text mining work and the preferences of potential end-us

 
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