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1 redictive of preclinical sensitivity to this drug combination.
2 1047R) tumor-bearing mice long term with the drug combination.
3 ry role for ROS in the efficacy of the three drug combination.
4 evious analyses showing the efficacy of this drug combination.
5 and CD8+ cells in tumours receiving adjuvant drug combination.
6 fit from the single most effective drug in a drug combination.
7 he combinatorial complexity of screening all drug combinations.
8 velop resistance that might be overcome with drug combinations.
9  Prediction Challenge to predict synergistic drug combinations.
10  TOP2 poison and thus reduce the efficacy of drug combinations.
11 ed corresponding synergistic or antagonistic drug combinations.
12 n of new RXRalpha-based antitumor agents and drug combinations.
13 e metric for assessing the efficacy of novel drug combinations.
14 matologic malignancies against a panel of 48 drug combinations.
15 means to explore the large space of possible drug combinations.
16  of patient sensitivity to various drugs and drug combinations.
17 lls and translated these hits into effective drug combinations.
18 alog efficacy through prodrug strategies and drug combinations.
19 emcitabine, we could identify more effective drug combinations.
20 bination drug therapy, including non-obvious drug combinations.
21 s across seven different clinically relevant drug combinations.
22  superior to that of classical two- or three-drug combinations.
23 ynamic model for both the binary and ternary drug combinations.
24 d to the formidable challenges of optimizing drug combinations.
25 cal trial by assessing potentially hazardous drug combinations.
26  for high-throughput screening of anticancer drug combinations.
27 peed up the entire discovery cycle of potent drug combinations.
28  principle-based reward for disease-specific drug combinations.
29 ug sensitivity, and helps identify effective drug combinations.
30 esents a novel strategy for designing cancer drug combinations.
31 tage to cancer cells against clinically used drug combinations.
32 immediate significance for the design of new drug combinations.
33  technique for identifying AEs caused by two-drug combinations.
34 the development of rational, mechanism-based drug combinations.
35 udy the effect of target tissue exposure for drug combinations.
36 ent (SDD) category for certain organisms and drug combinations.
37 ity and resistance for a total of 900 mutant-drug combinations.
38 eatment of preexisting CSCs with a genotoxic drug combination (5-fluorouracil, doxorubicin, and cyclo
39                                              Drug combinations acting synergistically to kill cancer
40 table framework for the design of high-order drug combinations against any pathogen or tumor.
41 We applied this framework to find the best 4-drug combinations against drug-resistant Mtb by adding n
42                                          The drug combination also reduced PC xenograft tumor burden
43 sed drugs as compared with oral antidiabetic-drug combinations among patients with a history of heart
44 models for identification of Effective Multi-drug combinations), an online tool kit that can effectiv
45                                A key step in drug combination analysis is the selection of an additiv
46 were administered orally and doses varied by drug combination and site.
47 how that the macaques that had received this drug combination and then stopped antiretroviral therapy
48 ing investigations, including fixed-duration drug combinations and alternative dosing schedules, are
49 ically focus on individual drugs rather than drug combinations and animal models are unreliable.
50  suitable for systematically testing various drug combinations and clinical trial designs in solid ca
51 suggest further, large-scale trials of these drug combinations and consideration of their use in STH
52 r the disease module similar to FDA-approved drug combinations and could potentially suggest novel sy
53 ugs are in pre-clinical development as novel drug combinations and immunotherapy combinations for can
54 e, to reduce the adverse effects of multiple drug combinations and improve outcome, we proposed a sin
55 development of DCCT strategies for different drug combinations and ratios.
56             To maximize therapeutic benefit, drug combinations and schedules must be explored to iden
57 lon-cancer metastasis can identify effective drug combinations and that the model has future clinical
58  evaluating the efficacy of antituberculosis drug combinations and the gaps in the evidence base for
59  elucidates a method to identify synergistic drug combinations and translate them to in vivo by prese
60 ned from prior losses of treatment efficacy, drug combinations, and control strategies will help adva
61  determining the optimal use of PARPi within drug combination approaches has been challenging.
62 egies may help provide rationales for future drug combination approaches with antimetastatic agents t
63                                         This drug combination (AraC+CHK1i+G-CSF) will open the doors
64                                  Synergistic drug combinations are a promising approach to achieve a
65 ople.IMPORTANCE A growing number of anti-HIV drug combinations are effective in suppressing virus rep
66                            Data from applied drug combinations are input into the differential evolut
67                                      Rather, drug combinations are largely dictated by empirical or c
68        Our results illustrate how high-order drug combinations are needed to kill drug-resistant canc
69                              However, 20% of drug combinations are poorly predicted by all methods.
70                                         Many drug combinations are routinely assessed to identify syn
71 onal identification methods of the effective drug combinations are usually associated with significan
72                                              Drug combinations are valuable tools for studying biolog
73 ients were given the recommended dose of the drug combination as determined from the dose-escalation
74  and that the model can be used to determine drug combinations associated with superior tumour killin
75 has been developed that selectively delivers drug combinations at synergistic ratios via tumor-target
76 eatment for human babesiosis consists of two drug combinations, atovaquone + azithromycin or quinine
77 esent an approach to uncover the efficacy of drug combinations based on the analysis of mono-drug eff
78 ssion of RCC, we identified the best overall drug combination, being a mixture of four drugs (axitini
79 r signaling pathways and predict synergistic drug combinations by integrating the knowledge embedded
80 at permit relative comparisons among various drug combinations by quantification of synergistic activ
81                   Therefore, we propose that drug combination can be employed not only for increasing
82 prostate cancer demonstrated how synergistic drug combinations can be discovered to inhibit multiple
83 ce evolution of CTX-M-15, and illustrate how drug combinations can be rationally designed to limit th
84                                        Three-drug combinations can control hypertension in about 90%
85                                  Synergistic drug combinations can lessen potential toxic side effect
86                              Use of rational drug combinations can overcome resistance to targeted dr
87                              Polytherapy (or drug combination cancer therapy (DCCT)), targeting multi
88 ypophosphorylation of 4E-BP1 induced by this drug combination causes an arrest of protein synthesis,
89 n/paclitaxel/bevacizumab, platinum-based two-drug combination chemotherapy, or non-platinum-based two
90 t credentialing and validation, implementing drug combinations, clinical trial designs, targeting tum
91                                The generated drug combinations collectively cover the disease module
92 a decreased flux across Caco-2 cells for the drug combinations compared to drug alone.
93               Even as the clinical impact of drug combinations continues to accelerate, no consensus
94  demonstrate proof-of-concept that candidate drug combinations could significantly inhibit growth and
95 stical modeling of single drug response from drug combination data can help determine significance of
96           Here we report AstraZeneca's large drug combination dataset, consisting of 11,576 experimen
97                        Most importantly, the drug combination depletes FLT3/ITD(+) LSCs in a genetic
98 andomly assigned to receive ART (an approved drug combination derived from US Department of Health an
99 eveloped the first deep generative model for drug combination design, by jointly embedding graph-stru
100 r small-molecule combinations, computational drug-combination design has not seen generative models t
101  learned representations, we have recast the drug-combination design problem as graph-set generation
102 are uncommon and nearly always involve multi-drug combinations developed by experimentation in humans
103  and albendazole [IDA]) is superior to a two-drug combination (diethylcarbamazine plus albendazole [D
104 otential to accelerate resistance-overcoming drug combination discovery.
105                Lifelong antiretroviral (ARV) drug combination dosing allows management as a chronic c
106 d also allow ready tailoring of a particular drug combination/drug release for the needs of an indivi
107                                         This drug combination effectively reduced the proliferation o
108 isualization, analysis and quantification of drug combination effects in terms of synergy and/or anta
109 eening is the standard approach to study the drug combination effects, yet it becomes impractical whe
110 dependence models of interaction to evaluate drug combination effects.
111 ombo predictions closely agree with measured drug combination efficacies both in vitro (Pearson's cor
112 nd CLL revealed specific patterns of ex vivo drug combination efficacy that were associated with sele
113 ta into clinically meaningful predictions of drug combination efficacy.
114                                    Even when drug combinations exhibit additivity or synergy in pre-c
115          Furthermore, cells treated with the drug combination exhibited increased promoter and gene b
116 how that the deep generative models generate drug combinations following the principle across disease
117  We evaluated the safety and efficacy of the drug combination for 26 weeks in patients with extensive
118 rs of proteasome and HSPAs seem an effective drug combination for pre-clinical development in highly
119 isplatin and paclitaxel, the clinically used drug combination for the treatment of advanced ovarian c
120 talk inhibition, to discover new synergistic drug combinations for breast cancer treatment.
121 approach can reliably prioritize synergistic drug combinations for cancer and uncover potential mecha
122 tional design of nanomedicine of synergistic drug combinations for cancer therapy.
123 cal approach in identifying synthetic lethal drug combinations for cancer treatment.
124  we prioritize approximately 10(5) human TSG-drug combinations for future follow-up.
125                          Relying on approved drug combinations for hypertension and cancer, we find t
126  are driven by the availability of drugs and drug combinations for initial therapy of myeloma as well
127 thodology to identify clinically efficacious drug combinations for specific diseases.
128  a protocol for the discovery of synergistic drug combinations for the treatment of disease.
129 cterial death is essential to develop potent drug combinations for the treatment of tuberculosis.
130                  Nanomedicine of synergistic drug combinations has shown increasing significance in c
131 eatment of HIV infections 10 tenofovir-based drug combinations have been marketed, and tenofovir diso
132                                              Drug combinations have the potential to improve efficacy
133 of how to engineer rational, mechanism-based drug combinations, however, remains lacking.
134                             In addition, the drug combination (i.e. lapatinib plus YM155) decreased n
135 er-soluble anticancer agents and delivery of drug combinations (i.e. multi-drug delivery) that seeks
136                  From cellular activation to drug combinations, immunological responses are shaped by
137 cannot coordinate the specific delivery of a drug combination in an accurately tuned ratio into cance
138 ounds of assaying to identify an optimal tri-drug combination in eight distinct chemoresistant bladde
139 anoid libraries in evaluating inhibitors and drug combinations in a preclinical setting.
140 sis to efficiently generate disease-specific drug combinations in a vast chemical combinatorial space
141 and synergies to identify the most effective drug combinations in advanced cancer models, thereby imp
142  viability responses of many single drug and drug combinations in agreement with experimental data.
143 ROC of 0.77 in the prediction of synergistic drug combinations in an independent dataset.
144 the use of Rgs16::GFP expression for testing drug combinations in cell culture and validation of best
145                                              Drug combinations in experimental models restore crenola
146 rongest signal, we evaluate thousands of TSG-drug combinations in HeLa cells, resulting in networks o
147  an effective strategy to screen synergistic drug combinations in high-throughput and a CRISPR-based
148 explain the superiority of many FDA-approved drug combinations in the absence of drug synergy or addi
149 ameters that predict the in vivo outcomes of drug combinations in the highly aggressive orthotopic 4T
150 s as either single agents or in 768 pairwise drug combinations in TNBC cell lines to identify synergi
151            The current approach to designing drug combinations includes in vitro optimization to maxi
152 ngevity in Drosophila Remarkably, the triple drug combination increased lifespan by 48%.
153 es were performed to test different drugs or drug combination, indicating that 5-fluorouracil (5-FU)
154                                          The drug combination induced synergistic inhibition of proli
155                                          The drug combination inhibited DNMT3a protein levels and inc
156 omosomal instability and in synthetic lethal drug combinations inspire optimism that CDK inhibitors w
157  and which one is dominant for a given tumor-drug combination is not known.
158 strate that the task of predicting AEs for 2-drug combinations is amenable to the Likelihood Ratio Te
159             The discovery of anti-resistance drug combinations is challenging as resistance can arise
160          However, in vivo translatability of drug combinations is complicated by the disparities in d
161       Therefore, identification of effective drug combinations is desperately needed.
162              Although the number of possible drug combinations is extensive, a series of principles c
163 ancers, but direct screening of all possible drug combinations is infeasible.
164                 However, the search space of drug combinations is large, making the identification of
165            Our ability to discover effective drug combinations is limited, in part by insufficient un
166                                  Synergistic drug combinations lead to the use of drugs at lower dose
167  identify the positive hits among the entire drug combination library in a parallel and rapid manner.
168 s proteasome inhibitors and immunomodulatory drug combination maintenance therapy for this patient po
169 ter that can be used to identify problematic drug combinations matrices and prevent further analysis
170 s recently emerged that many clinical cancer drug combinations may derive their efficacy from indepen
171                                   Additional drug combinations may help to further delay ESKD in type
172                              Therefore, this drug combination might be of therapeutic benefit in pati
173  and as such the therapeutic window for this drug combination needs to be determined.
174    Twenty (63%) reported at least 1 pathogen-drug combination not recommended for primary or suppleme
175                      INTERPRETATION: The two-drug combination of all-injectable, long-acting cabotegr
176  cyclophosphamide) should be offered a three-drug combination of an NK1 receptor antagonist, a 5-HT3
177                                 A redeployed drug combination of bezafibrate and medroxyprogesterone
178                               The redeployed drug combination of bezafibrate and medroxyprogesterone
179 ed the outcomes of VEC chemotherapy with a 5-drug combination of vincristine and carboplatin, alterna
180 -1 mRNA and virion production, we compared 2-drug combinations of leading candidate LRAs and identifi
181                                              Drug combinations, offering increased therapeutic effica
182 us antitumor activity than the corresponding drug combination (Olaparib + BKM120) in the MDA-MB-468 x
183 strategy, we can uncover potential effective drug combinations on a pan-cancer scale.
184 iation of current exposure to antiretroviral drug combinations on risk of cardiovascular events inclu
185 aracterize the association of antiretroviral drug combinations on risk of cardiovascular events.
186                     This could be applied to drug combinations or drug repositioning, and be helpful
187 allows users to query a series of chemicals, drug combinations or multiple targets, to enable multi-d
188                                      A multi-drug combination, particularly including a thiazide diur
189 ng one of these associations, we validated a drug combination predicted to overcome resistance to MEK
190 sent our method for DREAM AstraZeneca-Sanger Drug Combination Prediction Challenge to predict synergi
191  winning algorithm in the AstraZeneca-Sanger Drug Combination Prediction DREAM Challenge, which is a
192 ffective approach to examine novel drugs and drug combinations prior to animal testing.
193                           Eight weeks of the drug combination produced an SVR12 in 17 of 17 (100%) pa
194                                              Drug combinations provide effective treatments for diver
195 herefore, optimized treatment often requires drug combinations (rather than monotherapy) and N-of-one
196               The same sequence of the three-drug combination reduced the viability of patient breast
197 ine and mycophenolate mofetil) or the triple-drug combination regimen (cyclosporine, mycophenolate mo
198 oposed program led to the development of a 3-drug combination regimen for children from scratch, inde
199  two macaques that had received the complete drug combination remained healthy and did not develop AI
200     In particular, identifying AEs caused by drug combinations remains a challenging task.
201 ver, in vivo screening of all possible multi-drug combinations remains cost-prohibitive.
202                           Currently approved drug combinations result largely from empirical clinical
203    The removal of AZD4547 from the optimized drug combination resulted in 80% of cell viability inhib
204 ced when, on the basis of a matrix screen of drug combinations, ruxolitinib was combined with the Bcl
205 ma and BRAFi-resistant melanoma models, this drug combination safely and significantly extended host
206               Applying a systematic pairwise drug combination screen we observed a highly potent syne
207 ppropriate determination of the quality of a drug combination screen.
208 itor (CHK1i), we conducted a high-throughput drug combination screening in HGSOC cells.
209 cer cells, and they also show how systematic drug combination screening together with a molecular und
210 ne significance of synergy and antagonism in drug combination screens with few data point per drug pa
211 on framework for the analysis of large-scale drug combination screens.
212  The time has now come to define the optimal drug combinations, sequence of treatment, and drug regim
213                                Moreover, the drug combination significantly decreases the growth of v
214                                          The drug combination significantly delayed the onset of epil
215 valuate and cross-compare multiple drugs and drug combinations simultaneously in living tumors and ac
216 e spatially addressable screening of optimal drug combinations simultaneously.
217           In this study, we aimed to develop drug combination strategies to further enhance the thera
218 tatistical methods to propose and validate a drug combination strategy from already approved drugs an
219 ance in the treatment of hypertension of the drug combination strategy, based on the recommendations
220                                          The drug combination strategy, which is significantly improv
221                                   Subsequent drug combination studies identified the BCL-2 inhibitor
222                                              Drug combination studies revealed that all five compound
223 m of 85 different cancer cell lines and 1089 drug combinations, TAIJI achieved a high prediction corr
224 1 :aa3 , as well as for the development of a drug combination targeting oxidative phosphorylation in
225 n four diseases show that network-principled drug combinations tend to have low toxicity.
226 om GABAergic drugs enables, at least for the drug combinations tested, a straightforward method to ac
227 ies of further drug screening assays and two-drug combination testing, we identified that the combina
228  understanding of drug function, and limited drug combination testing.
229                                    Testing a drug combination that co-targeted GLUT1 and GSH synthesi
230              However, the most effective two-drug combination that is currently available for blood-p
231 nel, we evaluated RAS pathway inhibitors and drug combinations that are currently in clinical trial f
232                            First, the use of drug combinations that include bedaquiline might prevent
233 oing in our laboratory to identify effective drug combinations that include JQ1.
234                  There are several promising drug combinations that may enhance the impact of STH con
235 er, this concept, can pave the way for other drug combinations that may improve the clinical applicat
236 ombinations and their translation into novel drug combinations that modulate complex human disease ph
237 es, yet the systematic discovery of gene and drug combinations that modulate these phenotypes in huma
238                                              Drug combinations that simultaneously suppress multiple
239 , it may be possible to rationally construct drug combinations that yield more penetrant and lasting
240 to BETi and 2) inform the rational design of drug combination therapies.
241 has implications on the choice and timing of drug combination therapies.
242 abolic reprogramming that can be targeted by drug combination therapies.
243 mize the therapeutic potential of anticancer drugs, combination therapies and multitarget drugs have
244 superior therapeutic benefits to the current drug combination therapy used in clinical practice.
245                                        A two-drug combination therapy where one drug targets an offen
246  applying nanocarriers to improve anticancer drug combination therapy, review the use of nanocarriers
247  improved efficacy in clinical trials of new drug combinations, thereby increasing the survival of pa
248 ams" to aid in the visualization of the many drug combinations these structures are part of.
249 led uniform drug pharmacokinetics across the drug combinations, thus allowing us to study the inheren
250  thus, we sought to develop a novel targeted drug combination to bolster its therapeutic action again
251 es provide evidence of the potential of this drug combination to eliminate FLT3/ITD(+) LSCs and reduc
252  in the clinic, the quickest way to move the drug combination to patients would be to combine these a
253  This approach will likely require effective drug combinations to achieve high levels of latency reve
254 us opening a promising approach to translate drug combinations to clinically viable treatment regimen
255  genetic screening method in identifying new drug combinations to combat acquired BRAFi resistance.
256 benefit from PI3Kalpha inhibition and design drug combinations to counteract the emergence of resista
257 d tested 10 drugs in all permutations of two-drug combinations to define synergistic combinations by
258 epair, thus paving the way toward innovative drug combinations to fight cancers.
259 pathways, with implications on how to tailor drug combinations to improve therapeutic efficacy.
260                Furthermore, they can suggest drug combinations to increase efficacy and combat acquir
261 nd explore how they may relate to successful drug combinations to overcome acquired resistance to can
262 oriness and enabling platforms for screening drug combinations to thwart resistance at the individual
263 m for preclinical testing of novel drugs and drug combinations to treat ALL.
264 tic and comprehensive method to find optimal drug combinations to use in children, ideal exposures, a
265                                         This drug combination transiently administered for 2 weeks du
266                Empahsis will be given to the drug combination treatment as first step of the antihype
267 iotic dosages so low that the equivalent two-drug combination treatments are ineffective.
268 mirrored the patterns of response to several drug combination treatments, suggesting that the activit
269 er, pre-exposure prophylaxis (PrEP) with the drug combination Truvada can substantially decrease HIV
270  IDA based method to predict the efficacy of drug combinations using monotherapy data from high-throu
271 biased evaluation of synergistic efficacy in drug combinations using probabilistic models such as Bli
272 chronized co-delivery of the platinum-taxane drug combination via single carrier to the same targeted
273 haracterize bacterial populations of key bug-drug combinations via a retrospective sequencing survey.
274 nd disappeared when the otherwise successful drug combination was applied to the same NSCLC cancer im
275 Tumor inhibition with the optimally selected drug combination was further confirmed by using PC-3 tum
276                                         This drug combination was recently approved by the U.S. Food
277 ohort, exposure to both individual drugs and drug combinations was associated with modestly increased
278              To identify novel and effective drug combinations, we performed ex vivo sensitivity prof
279 evels at the end of 2-minute applications of drug combinations were >10% of the peak response to satu
280                                          The drug combinations were administered in four 3-day cycles
281                                       Only 9 drug combinations were assessed on >1 phase 2A endpoint
282                                    Second, 2-drug combinations were examined for zones of synergy, an
283             The associations for some tissue-drug combinations were remarkably strong, with genetic l
284                              These optimized drug combinations were significantly more potent than mo
285                                              Drug combinations were tested in various therapy-resista
286                                    Ten novel drug combinations were validated experimentally, and sev
287 pared with those receiving oral antidiabetic-drug combinations, were estimated by means of conditiona
288 m two patients exhibited unique responses to drug combinations when cultured on the drug-eluting micr
289 opment of antibiotic resistance is to design drug combinations where the development of resistance ag
290  leads directly to the design of synergistic drug combinations, which we validate systematically by c
291 ent subpopulations, for both monotherapy and drug combinations, will be important.
292 k, we modeled ways to improve the standard 3-drug combination with the addition of new drugs.
293 dy identifies a rapid approach to assess the drug combinations with a mechanistic basis for selection
294 ased models for users to predict synergistic drug combinations with dose-response information and dru
295                   Results identified several drug combinations with higher efficacy than single-dose
296       We find that it is often better to use drug combinations with matched penetration profiles, alt
297 by using an in vitro system may define novel drug combinations with significant in vivo activity.
298 ignificant increase in the use of ezetimibe, drug combinations with statins, and maximal LLT.
299 tes that we can accurately predict effective drug combinations with translational value.
300  had CNS objective response rates (ORR), the drug combination would be deemed promising.

 
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