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1 ixed model (G-BLUP) and a Bayesian (Bayes C) prediction method.
2 age of these results to develop a structural prediction method.
3 ovement of our IntFOLD-TS tertiary structure prediction method.
4 ure was generated using the nearest template prediction method.
5 atorial counting approach independent of any prediction method.
6 ossible directions for further improving the prediction method.
7 d MapPred, a new deep learning-based contact prediction method.
8 ore (for binding) 1.5-fold over the original prediction method.
9 he precision and relative sensitivity of the prediction method.
10 pace, and machine-learning probability-based prediction method.
11 members, i.e. are too small for such contact prediction methods.
12 esian framework represent the main family of prediction methods.
13 urgent need for unbiased haploinsufficiency prediction methods.
14 likely influenced many previous DeltaDeltaG prediction methods.
15 ith significant improvement over existing MP prediction methods.
16 A target sites and improve miRNA target site prediction methods.
17 ent progress and challenges in RNA structure prediction methods.
18 sted, motivating our efforts to benchmark pI prediction methods.
19 compare against the current leading contact prediction methods.
20 g contact information into protein structure prediction methods.
21 ASP-winning template-based protein structure prediction methods.
22 framework that can be applied to driver gene prediction methods.
23 ve quality of binding predictions over other prediction methods.
24 presents new challenges to protein function prediction methods.
25 ng PconsC in comparison with earlier contact prediction methods.
26 ficant challenge for computational structure prediction methods.
27 and increase the power of protein structure prediction methods.
28 and compared it with the available competing prediction methods.
29 , underlies numerous potential functions and prediction methods.
30 roviding an opportunity to assess and refine prediction methods.
31 creased accuracy versus generic miRNA target prediction methods.
32 rforms the four off-the-shelf subchloroplast prediction methods.
33 a simplified system for testing new affinity prediction methods.
34 gnificantly outperformed alternate, analogue prediction methods.
35 ying the framework to direct protein complex prediction methods.
36 ting phylogenies can be used as features for prediction methods.
37 s substitutes in the absence of good epitope prediction methods.
38 een used to evaluate many other binding site prediction methods.
39 cilitate further development of permeability prediction methods.
40 RNA structure prediction by RNAG over extant prediction methods.
41 ble benchmark compound for crystal structure prediction methods.
42 e future models created by protein structure prediction methods.
43 ent of successful protein tertiary structure prediction methods.
44 bias in estimating the accuracy of function prediction methods.
45 large-scale evaluation of sequence-based SDP prediction methods.
46 the effect scores to evaluate variant effect prediction methods.
47 oes, suggesting limitations with current NES prediction methods.
48 develop and benchmark a variety of different prediction methods.
49 is, in part, because of uncertainty in motif prediction methods.
50 ms of comprehending and developing novel bio-prediction methods.
51 ry drug susceptibility testing and in silico prediction methods.
52 than any features suggested by textbooks and prediction methods.
53 n with the state-of-the-art protein function prediction methods.
54 o commonly used kinase inhibitor selectivity prediction methods.
55 combinations of omic datasets with different prediction methods.
56 significantly outperforms all existing link prediction methods.
57 s and assessing the performance of footprint prediction methods.
58 tic evaluation of ten publicly available AMP prediction methods.
59 ell as the state-of-the-art binding affinity prediction methods.
60 ent, state-of-the-art, local and global link-prediction methods.
61 re dependency that should be considered by a prediction method?
62 re dependency that should be considered by a prediction method?
64 volving the combination of crystal structure prediction methods, ab initio calculated chemical shifts
66 On a non-redundant test set, our epitope prediction method achieves 44% recall at 14% precision a
68 d accuracy is not a property of a particular prediction method: after conditioning on the SDE set, na
72 he heart of development of protein structure prediction methods and comparison of their performance.
74 ndings assess state-of-the-art cancer driver prediction methods and develop a new and improved consen
75 ng a catalog of characteristics about the 98 prediction methods and identifying common and exclusive
77 ting the knowledge encoded by different sRNA prediction methods and optimally aggregating them as pot
78 f-based modeling is complementary to current prediction methods and provides a promising direction in
79 sers to compare and choose between different prediction methods and provides estimates of the expecte
80 and highlights the need for generalized risk prediction methods and the inclusion of more diverse ind
81 PLEXD with three state-of-the-art expression prediction methods and two novel logistic regression app
82 ing methods outperform benchmark branchpoint prediction methods, and can produce high-accuracy result
85 on method was developed for is the first PPI prediction method applied on benchmark datasets of Arabi
90 nd, current computational kinase selectivity prediction methods are computational intensive and can r
92 of the machine learning based essential gene prediction methods are lack of skills to handle the imba
93 g increasingly commonplace, existing miR-TSV prediction methods are not designed to analyze these dat
98 estigation, semiempirical NMR chemical shift prediction methods are used to evaluate the dynamically
99 d algorithms and that alchemical free energy predictions methods are close to becoming a mainstream t
100 red the accuracies of four genomic-selection prediction methods as affected by marker density, level
101 improvement over other state-of-the-art DTI prediction methods as well as several novel predicted DT
102 shown the comparative effectiveness of each prediction method, as well as provided guidelines as to
103 viously described missense mutation function prediction methods at discriminating known oncogenic mut
104 Our experimental results show that our IDR prediction method AUCpreD outperforms existing popular d
106 ng and Zhou develop a non-parametric genetic prediction method based on latent Dirichlet Process regr
107 ene patterns further, we propose an ortholog prediction method based on our gene pattern mining algor
109 encing Project, we tested the utility of the prediction method based on the ratio of non-synonymous t
110 s paper proposes an efficient blood pressure prediction method based on the support vector machine re
111 network-based inference applications, i.e., prediction methods based on interactomes, that can be us
114 r small proteins using the Rosetta structure prediction method, but for larger and more complex prote
115 obustness, we also develop a committee-based prediction method by pooling together multiple personali
116 ecent CASP11 blind test of protein structure prediction methods by incorporating residue-residue co-e
117 stance, we design a new embedding-based link prediction method called global and local integrated dif
121 tion (BLUP) appears to be the most efficient prediction method compared to the other commonly used ap
124 MS will be crucial to improve variant effect prediction methods, data diversity hindered simplificati
126 Understanding how RNA secondary structure prediction methods depend on the underlying nearest-neig
128 efficiency and accuracy of RNA 3D structure prediction methods during the succeeding challenges of R
129 xperiments demonstrated that our three-level prediction method effectively increased the recall of fu
130 r the last decade in the accuracy of epitope prediction methods, especially for those that rely on th
131 vely when compared to other state of the art prediction methods, especially when sequence signal to r
137 this study, we aimed to develop a genotypic prediction method for antimicrobial susceptibilities.
138 pose a novel multi-classifier-based function prediction method for Drosophila melanogaster proteins,
142 , has emerged as an alternative to the motif prediction method for the identification of T cell epito
145 , we present BOCTOPUS2, an improved topology prediction method for transmembrane beta-barrels that ca
147 -specific and whole-protein terms and select prediction methods for different classes of GO terms.
154 cdotal due to the requirement of the contact prediction methods for the high volume of sequence homol
157 omparison against the sequence-based contact prediction methods from CASP9, where our method presente
160 ggests a set of peptides for which different prediction methods give divergent predictions as to thei
164 technologies, computational protein function prediction methods have become increasingly important.
166 proteins, many computational protein-protein prediction methods have been developed in the past.
172 d contact-guided ab initio protein structure prediction methods have highlighted the importance of in
174 Recently, several groups using computational prediction methods have independently reported possible
176 This paper presents a new indel functional prediction method HMMvar based on HMM profiles, which ca
178 alysis has shown that MMSE has no value as a prediction method in determining minimal HE and in respe
179 and comprehensive assessment of the contact-prediction methods in different template conditions.
182 n ranks FunFHMMer as one of the top function prediction methods in predicting GO annotations for both
183 ass learners, as well as currently available prediction methods in terms of F1 score, accuracy and AU
185 MetaPred2CS integrates six sequence-based prediction methods: in-silico two-hybrid, mirror-tree, g
186 ion) often outperforms a host of alternative prediction methods including random forests and penalize
187 It outperformed several state-of-the-art prediction methods including Rosetta de-novo, MAINMAST,
197 A new generation of automated RNA structure prediction methods may help address these challenges but
198 nnotations, we used a sequence-based de novo prediction method, MetalDetector, to identify Cys and Hi
199 pared with state-of-the-art coding potential prediction methods, MiPepid performs exceptionally well,
200 tation, we propose and develop a novel miRNA prediction method, miRank, based on our new random walks
201 as the basis for a quantitative miRNA target prediction method, miRNA targets by weighting immunoprec
202 and outperforms state-of-the-art TF binding prediction methods, MocapG, MocapS, and Virtual ChIP-seq
203 lts of our three deep learning-based contact prediction methods (MULTICOM-CLUSTER, MULTICOM-CONSTRUCT
204 he-art non-template-based functional residue prediction methods must predict ~25% of a protein's tota
206 deletion, ATRX mutation, and TERT mutations) prediction methods of low-grade gliomas with imaging.
209 he accuracies of the three type III effector prediction methods on a small set of proteins not known
211 form a comprehensive assessment of 18 driver prediction methods on more than 3,400 tumor samples from
212 gorithm over current top-performing function prediction methods on the yeast and mouse proteomes acro
213 spite significant development in active-site prediction methods, one of the remaining issues is ranke
214 perimental annotation, most protein function prediction methods operate at the protein-level, where f
217 ssifiers and show that our cross-sample TFBS prediction method outperforms several previously describ
218 or evaluation that can be applied to any CRM prediction method, particularly a supervised method.
219 iled analysis of two sequence-based function prediction methods, PFP and ESG, which were developed in
220 h the development of a new protein interface prediction method, PredUs, that identifies what residues
221 information predicted by two protein contact prediction methods PSICOV and DNcon to generate a new sc
223 ths of most widely used BLAST-based function prediction methods, rarely used in function prediction b
224 sets generated by different RNA 3D structure prediction methods (raw, for-evaluation and standardized
225 The accuracy of a sequence-based antigenic prediction method relies on the choice of amino acids su
228 protein pairs (positive PPIs), computational prediction methods rely upon subsets of negative PPIs fo
229 re presenting a fast and accurate off-target prediction method, REMAP, which is based on a dual regul
230 ere, we report a new RNA secondary structure prediction method, restrained MaxExpect (RME), which can
236 f the model to those obtained through simple prediction methods, such as through an analytical approx
237 Traditional template-based protein structure prediction methods tend to focus on identifying the best
238 iases, we have developed a composition-based prediction method that accurately predicts PrLD assembly
241 We propose a similarity-based drug-target prediction method that enhances existing association dis
244 ubject to negative selection, we developed a prediction method that measures paucity of non-synonymou
245 on prediction (PFP) is an automated function prediction method that predicts Gene Ontology (GO) annot
247 e present iDNAProt-ES, a DNA-binding protein prediction method that utilizes both sequence based evol
248 ntegrated into PrePPI, a structure-based PPI prediction method that, so far, has been limited to inte
250 nome, as compared with four current function prediction methods that precisely predicted function for
251 In this work, we develop gene expression prediction methods that relax the independence and addit
252 ore, there is a pressing need to develop new prediction methods that use an updated set of 14-3-3-bin
253 ant to developers and users of gene function prediction methods that use gene co-expression to indica
254 the original 3dRNA as well as other existing prediction methods that used the direct coupling analysi
255 , when comparing with known state-of-the-art prediction methods, the accuracy of our method is 6.31-2
256 he opportunity for building binding affinity prediction methods, the accurate characterization of TF-
257 le computationally scalable execution of our prediction methods; these include SOAP and XML-RPC web s
258 limitations of the current RNA 3D structure prediction methods, this work is bringing us closer to t
259 ovides a small sample to train parameters of prediction methods, thus leading to low confidence.
260 wide association analysis and an Elastic Net prediction method to analyze the relationship between DN
262 analytical method and, for the first time, a prediction method to enable enhancement of researches on
263 SPOCS implements a graph-based ortholog prediction method to generate a simple tab-delimited tab
264 ion approach using the proposed binding site prediction method to predict CaM binding proteins in Ara
265 differences and subsequently determine which prediction method to use would require further specifica
266 using an ensemble of two secondary structure prediction methods to guide fragment selection in combin
267 does not respond, and the use of simple risk prediction methods to individualise the amount and type
268 ovide guidance for immunologists as to which prediction methods to use, and what success rates are po
271 lso review many previous treatments of these prediction methods, use the latest available annotations
274 s, we examined the reliabilities of the site-prediction methods, using nucleotide sequence data for t
278 ide Predictor (PPTPP), a Random Forest-based prediction method was presented to address this issue.
279 dification sites and state-of-the-art target prediction methods we re-estimate the snoRNA target RNA
284 en Markov model-based transmembrane topology prediction method, we now propose a comprehensive topolo
285 l sensitivity and specificity of the genomic prediction method were 0.97 (95% confidence interval [95
289 f Inheritance for Nonsynonymous variants), a prediction method which utilizes a random forest algorit
290 o-PFP, a new sequence-based protein function prediction method, which mines functional information fr
291 ave previously developed successful function prediction methods, which were shown to be among top-per
293 for development of new multiple localization prediction methods with higher coverage and accuracy.
295 ructure determination accuracies of sequence prediction methods with the empirically determined value
296 olutional neural network (CNN)-based contact prediction methods with three coevolution-based methods
297 incorporates ConFunc, our existing function prediction method, with other approaches for function pr
299 alidation of these new generation of epitope prediction methods would benefit from regularly updated
300 parameters used in state-of-the-art membrane prediction methods, yet achieves very high segment accur