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1 ious populations, cell types, and disorders (big data).
2 leveraging novel approaches using omics and big data.
3 unknown and multivariate distinctions within big data.
4 ers and hierarchical statistical analysis of big data.
5 ess of machine learning models in the era of big data.
6 o directly extract functional gene sets from big data.
7 of the body including the skin is in era of big data.
8 powerful strategy in general for mining such big data.
9 approaches particularly suited to leveraging big data.
10 ponse element reporter gene assay models and big data.
11 is and attend to new challenges presented by big data.
12 iscuss recent developments related to use of big data.
13 lp researchers navigate and understand these big data.
14 ecially in the era of biological and medical big data.
15 ecially in the era of biological and medical big data.
16 cy and the evolving scientific enterprise of big data.
17 We live in the era of genomics and big data.
18 elopment status using highway transportation big data.
19 cer management by unlocking the potential of big data.
20 experimental models and multiomics-generated big data.
21 2)), rendering BP prohibitive for modern-day big-data.
22 how can reliable knowledge be extracted from big data?
23 ular, has been enabled by the use of labeled big data, along with markedly enhanced computing power a
27 e designed to meet the increasing demand for big-data analyses, ranging from bulk sequence processing
28 ologies are critical to support the types of big data analysis necessary for kidney precision medicin
29 Machine Learning (ML) is a powerful tool for big data analysis that shows substantial potential in th
33 software provides built-in optimization for 'big data' analysis by storing all relevant outputs in an
35 neous datasets presents new opportunities to big data analysts, because the knowledge that can be acq
39 iterative process based on interpretation of big data analytics from birth and patient cohorts, respo
42 urthermore, ongoing advances in the field of big data analytics promise to create an exciting opportu
44 ution in the water sector will encounter the Big data and Artificial Intelligence (AI) revolution.
48 mart systems, photonics, robotics, textiles, Big Data and ICT (information & communication technologi
49 drug development and biomedical engineering, big data and information technology and allergic disease
50 that can be addressed by the integration of big data and interpreted using novel analytical methodol
51 as in-depth molecular profiling, biomedical big data and machine intelligence methods will augment t
52 base quality: notwithstanding the arrival of big data and machine learning, it remains perilous to ig
55 PIA fills in the gap between cancer genomics big data and the delivery of integrated information to e
56 rch in the interpretation and application of big data and the impact of digital technologies on healt
57 ation discusses the security implications of Big Data and the need for security in the life sciences.
61 asing availability of large public datasets (big data) and computational capabilities, data science i
62 o many imaging processing problems involving big data, and have recently shown potential for the stud
64 cience, next-generation sequencing, genomics big data, and machine learning, could contribute to meet
68 ology, however, cannot scale to satisfy such big data applications with the required throughput and e
69 available for analysis-the typical case for big data applications-the replications permit convention
72 mic data needed to build the tree, we used a Big-data approach that searched automatically epidemiolo
75 discuss the benefits and challenges of such Big Data approaches in biology and how cell and molecula
76 c and phenomics data, will take advantage of big data approaches including machine learning to unders
77 ic data, demand cerebrovascular expertise on big data approaches to clinically relevant paradigms.
78 e much more knowledge when interrogated with Big Data approaches, such as applying integrative method
82 a re-use activities in the field, including 'big data' approaches, is enabling novel research and new
84 arge volumes of high-resolution measurements-big data-are now being brought to bear on this problem.
87 ormation about the hidden structures within "big data" assets, and medical professionals, epidemiolog
88 Global neuroscience projects are producing big data at an unprecedented rate that informatic and ar
92 ng precision health requires making sense of big data, both at the population level and at the molecu
94 ncreases TPOT's efficiency in application on big data by slicing the entire dataset into smaller sets
95 gnition and visualization of similarities in big data can also infer the network angular coordinates
96 me these challenges by investigating whether big data can be used to benchmark a highly phenotyped he
99 nference from large observational databases (big data) can be viewed as an attempt to emulate a rando
101 n diagnostics, remote rhythm monitoring, and big data capabilities, we anticipate that adoption of a
102 Recent advances in personalized medicine, "big data", causal inference using observational data, no
103 g benchmark study, DREAM Alzheimer's Disease Big Data challenge to predict changes in Mini-Mental Sta
108 ed our algorithm with other state of the art big data compression algorithms namely gzip, bzip2, fast
109 B-SNIP projects that use phenotype data and big data computations to generate novel outcomes and gli
112 ve, or even suggest, that location and other big-data data sets can be anonymized and of general use.
113 ive parameters from medical images to create big-data data sets that can identify distinct patterns i
115 it requires complex multi-step processing of big data demanding considerable computational expertise
118 based disparities of TNBC.Significance: This big data-driven study comparing normal and cancer transc
119 se requirements could be met by developing a Big-Data-driven stem cell science strategy and community
121 s of computational toxicology in the current big data era and can be extended to develop predictive m
128 ions have pushed brain development into the "big data" era, and that current and future transversal a
129 in C++, accounts for compatibility with the 'big data' era in biological science, and it primarily fo
133 ative Medicines Initiative 2 and part of the Big Data for Better Outcomes Programme (BD4BO), the over
135 chine-learning approach using remote sensing big data for the detection of archaeological mounds in C
136 a, but the effective mining and modeling of 'big data' for new biological discoveries remains a signi
138 rful computers and availability of so-called big data from a variety of sources means that data scien
141 the level of individual patients), building "big data" from a longitudinal perspective and not only a
142 with cardiovascular imaging, combined with "big data" from the electronic health record and patholog
145 t of high-throughput technologies leading to big data generation, increasing number of gene signature
146 This Series paper will highlight emerging big data genomic approaches with the potential to accele
150 ovides an overview of how the realization of big data has transformed our field and what may lie in s
153 his work, we provide examples of how spatial big data have been used thus far in epidemiological anal
156 he implications of the rising use of spatial big data in epidemiology to health risk communication, a
157 d Treatment Enhancement Through the Power of Big Data in Europe (PIONEER) is a European network of ex
158 erials design enabled by the availability of big data in imaging and data analytics approaches, inclu
159 d ethical challenges with the use of spatial big data in infectious disease surveillance and inferenc
161 ) and other nations in the implementation of Big Data in patient care with regards to their centraliz
162 EER) is a European network of excellence for big data in prostate cancer, consisting of 32 private an
163 highly scalable approach for the analysis of big data in proteomics, i.e. microbiome or metaproteome
164 ploiting the increasingly available genomics big data in statistical inference and presents a promisi
165 us Diseases to review the recent advances of big data in strengthening disease surveillance, monitori
171 onal tools to handle a variety of biomedical BIG DATA including gene expression arrays, NGS and medic
174 Research Team (CANHEART) Immigrant study, a big data initiative, linking information from Citizenshi
175 To demonstrate the potential for integrating big data into a functional microbiology workflow, we rev
176 ressively pursue the integration of emerging big data into regional transportation emissions modeling
184 thereby avoiding the many restrictions (and big data issues) that can accompany access to individual
187 istry, * ca. 2020?" Then move to examples of Big Data, machine learning and neural networks in action
188 ry, * ca. 2020?" Then we move to examples of Big Data, machine learning and neural networks in action
190 s study underscores how a common practice in big data mapping studies shows an apparent high predicti
193 roaches range from drug discovery efforts to big-data methods and direct-to-consumer (DTC) strategies
194 at having so many materials allows us to use big-data methods as a powerful technique to study these
195 re, we discuss the application of so-called "big-data" methods to high dimensional microscopy data, u
196 good precedent for the study of reservoirs, big data mining, predictions and subsequent outbreaks of
198 the current study, we use spatial navigation big data (n = 27,108) from the Sea Hero Quest (SHQ) game
199 t assays of fully random DNA can provide the big data necessary to develop complex, predictive models
201 e brought about great progress in processing big data obtained from high-dimensional chromatographic
202 the underlying GRN, a model that integrates big data of diverse types is expected to increase both t
204 and cost-effective repurposing efforts using big data ("omics") have been designed to characterize dr
205 cking software can be used for analyzing the big data on doses for auditing patient safety, scanner u
206 time perspectives can be approximated using "big data" on search engine queries, and that these indic
208 Insights distilled from integrating multiple big-data or "omic" datasets have revealed functional hie
210 tantial pressure because of the emphasis on "big data," phenomenology, and personalized medical thera
213 er genomes and transcriptomes has produced a big data problem that precludes many cancer biologists a
214 on of the algorithm, SJARACNe, to solve this big data problem, based on sophisticated software engine
215 tworks have gained immense popularity in the Big Data problem; however, the availability of training
216 algorithmic developments to tackle emerging 'big data' problems in biomedical research brought on by
218 e imbalance between algorithm innovation and big data processing has been more serious and urgent.
222 mprove efficiency, flexibility, support for 'big data' (R's long vectors), ease of use and quality ch
225 Emerging scientific endeavors are creating big data repositories of data from millions of individua
227 ortium to unite scientists with expertise in big data research and epidemiology to develop the COVID
228 to Big Data such as the lack of diversity in Big Data research, and the security and transparency ris
230 CANHEART study cohort to serve as a powerful big data resource for scientific research aimed at impro
231 ntal and Craniofacial Research in 2009 as a 'big data' resource for the craniofacial research communi
238 ased power and speed of computers, with the "big data" revolution having already happened in genomics
243 ghlight opportunities for researchers to use big data sets in the fields of gastroenterology and hepa
248 is elegans have a long history of collecting Big Data, since the organism was selected with the idea
249 data transfer, we created a tool called the Big Data Smart Socket (BDSS) that abstracts data transfe
251 ffordable approach to this problem, bringing big data solutions within the reach of laboratories with
252 -bla computational model and HTS data from a big data source (PubChem) were used to profile environme
253 ta have the velocity, volume, and variety of big data sources and contain additional geographic infor
254 and cost-effectiveness of utilizing existing big data sources to conduct population health studies.
255 asket and umbrella studies and research from big data sources, such as electronic health records, adm
257 nformation from traditional surveillance and big data sources, which seems the most promising option
259 nd then describe three studies drawing from "big data" sources to assess liberal-conservative differe
262 emergence of surveillance records mined from big data such as health-related online queries and socia
263 he topic by discussing potential pitfalls to Big Data such as the lack of diversity in Big Data resea
267 These results highlight the potential for "big data" techniques to provide new insights into moveme
268 rovide integrated information services using big data technology for microbial resource centers and m
271 c health records (eHRs) are a source of such big data that provide a multitude of health related clin
272 alytical approaches, developed to cope with "big data", that require no 'a priori' assumptions about
273 Using modern computational approaches for big data, the denser point clouds can efficiently be pro
275 Taking into consideration the explosion of "big data," the advent of more sophisticated data collect
278 key goal of cancer systems biology is to use big data to elucidate the molecular networks by which ca
279 significant potential for the application of Big Data to healthcare, but there are still some impedim
280 ng the heterogeneity of these transcriptomic Big Data to identify defective biological processes rema
288 otential synergy between deep learning from "big data" (to create semantic features for individual wo
289 d opportunities and challenges that parallel big data transformations in other fields and has rapidly
291 Moreover, the analysis creates the original big data unveiling three general features of BRaf signal
295 hould be more frequently adopted to leverage big data while minimizing bias in hospital performance a
297 fferent stages of the disease, the resulting big data will be assembled into a single innovative data
298 itate real-time inference and learning from "big data" with high efficiency and speed in intelligent