302 research outputs found

    Two-stage model-based clinical trial design to optimize phase I development of novel anticancer agents

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    Background The phase I program of anticancer agents usually consists of multiple dose escalation studies to select a safe dose for various administration schedules. We hypothesized that pharmacokinetic and pharmacodynamic (PK–PD) modeling of an initial phase I study (stage 1) can be used for selection of an optimal starting dose for subsequent studies (stage 2) and that a post-hoc PK–PD analysis enhances the selection of a recommended dose for phase II evaluation. The aim of this analysis was to demonstrate that this two-stage model-based design, which does not interfere in the conduct of trials, is safe, efficient and effective. Methods PK and PD data of dose escalation studies were simulated for nine compounds and for five administration regimens (stage 1) for drugs with neutropenia as dose-limiting toxicity. PK–PD models were developed for each simulated study and were used to determine a starting dose for additional phase I studies (stage 2). The model-based design was compared to a conventional study design regarding safety (number of dose-limiting toxicities (DLTs)), efficiency (number of patients treated with a dose below the recommended dose) and effectiveness (precision of dose selection). Retrospective data of the investigational anticancer drug indisulam were used to show the applicability of the model-based design. Results The model-based design was as safe as the conventional design (median number of DLTs = 3) and resulted in a reduction of the number of patients who were treated with a dose below the recommended dose (−27%, power 89%). A post-hoc model-based determination of the recommended dose for future phase II studies was more precise than the conventional selection of the recommended dose (root mean squared error 8.3% versus 30%). Conclusions A two-stage model-based phase I design is safe for anticancer agents with dose-limiting myelosuppression and may enhance the efficiency of dose escalation studies by reducing the number of patients treated with a dose below the recommended dose and by increasing the precision of dose selection for phase II evaluation

    BICEPP: an example-based statistical text mining method for predicting the binary characteristics of drugs

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    <p>Abstract</p> <p>Background</p> <p>The identification of drug characteristics is a clinically important task, but it requires much expert knowledge and consumes substantial resources. We have developed a statistical text-mining approach (BInary Characteristics Extractor and biomedical Properties Predictor: BICEPP) to help experts screen drugs that may have important clinical characteristics of interest.</p> <p>Results</p> <p>BICEPP first retrieves MEDLINE abstracts containing drug names, then selects tokens that best predict the list of drugs which represents the characteristic of interest. Machine learning is then used to classify drugs using a document frequency-based measure. Evaluation experiments were performed to validate BICEPP's performance on 484 characteristics of 857 drugs, identified from the Australian Medicines Handbook (AMH) and the PharmacoKinetic Interaction Screening (PKIS) database. Stratified cross-validations revealed that BICEPP was able to classify drugs into all 20 major therapeutic classes (100%) and 157 (of 197) minor drug classes (80%) with areas under the receiver operating characteristic curve (AUC) > 0.80. Similarly, AUC > 0.80 could be obtained in the classification of 173 (of 238) adverse events (73%), up to 12 (of 15) groups of clinically significant cytochrome P450 enzyme (CYP) inducers or inhibitors (80%), and up to 11 (of 14) groups of narrow therapeutic index drugs (79%). Interestingly, it was observed that the keywords used to describe a drug characteristic were not necessarily the most predictive ones for the classification task.</p> <p>Conclusions</p> <p>BICEPP has sufficient classification power to automatically distinguish a wide range of clinical properties of drugs. This may be used in pharmacovigilance applications to assist with rapid screening of large drug databases to identify important characteristics for further evaluation.</p

    Computational approaches for translational oncology: Concepts and patents

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    Background: Cancer is a heterogeneous disease, which is based on an intricate network of processes at different spatiotemporal scales, from the genome to the tissue level. Hence the necessity for the biomedical and pharmaceutical research to work in a multiscale fashion. In this respect, a significant help derives from the collaboration with theoretical sciences. Mathematical models can in fact provide insights into tumor-related processes and support clinical oncologists in the design of treatment regime, dosage, schedule and toxicity. Objective and Method: The main objective of this article is to review the recent computational-based patents which tackle some relevant aspects of tumor treatment. We first analyze a series of patents concerning the purposing the purposing or repurposing of anti-tumor compounds. These approaches rely on pharmacokinetics and pharmacodynamics modules, that incorporate data obtained in the different phases of clinical trials. Similar methods are also at the basis of other patents included in this paper, which deal with treatment optimization, in terms of maximizing therapy efficacy while minimizing side effects on the host. A group of patents predicting drug response and tumor evolution by the use of kinetics graphs are commented as well. We finally focus on patents that implement informatics tools to map and screen biological, medical, and pharmaceutical knowledge. Results and Conclusions: Despite promising aspects (and an increasing amount of the relative literature), we found few computational-based patents: There is still a significant effort to do for allowing modelling approaches to become an integral component of the pharmaceutical research

    Two-stage model-based design of cancer phase I dose escalation trials: evaluation using the phase I program of barasertib (AZD1152)

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    Introduction Modeling and simulation of pharmacokinetics and pharmacodynamics has previously been shown to be potentially useful in designing Phase I programs of novel anti-cancer agents that show hematological toxicity. In this analysis, a two-stage model-based trial design was evaluated retrospectively using data from the Phase I program with the aurora kinase inhibitor barasertib. Methods Data from two Phase I trials and four regimens were used (n = 79). Using barasertib-hydroxy QPA plasma concentrations and neutrophil count data from only study 1A, a PKPD model was developed and subsequently used to predict the MTD and a safe starting dose for the other trials. Results The PKPD model based on data from the first study adequately described the time course of neutrophil count fluctuation. The two-stage model-based design provided safe starting doses for subsequent phase I trials for barasertib. Predicted safe starting dose levels were higher than those used in two subsequent trials, but lower than used in the other trial. Discussion The two-stage approach could have been applied safely to define starting doses for alternative dosing strategies with barasertib. The limited improvement in efficiency for the phase I program of barasertib may have been due to the fact that starting doses for the studied phase I trials were already nearly optimal. Conclusion Application of the two-stage model-based trial design in Phase I programs with novel anti-cancer drugs that cause haematological toxicity is feasible, safe, and may lead to a reduction in the number of patient treated at sub-therapeutic dose-levels

    Liposomal formulation of an emetine analog in combination with daunorubicin for the treatment of acute myeloid leukemia

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    Postponed access: the file will be accessible after 2020-05-31FARM399/05HMATF-FAR

    PHARMACOGENOMICS IN THE EMIRATI POPULATION: APPLICATIONS IN CARDIOVASCULAR DISEASES AND ONCOLOGY

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    Pharmacogenetic variations contribute to interindividual differences in drug response. Advances in molecular techniques provided insights into interpopulation pharmacogenomic variations. A limited number of pharmacogenetic studies were conducted in the UAE population. The current study aims to explore the variation landscape in important pharmacogenes in Emiratis. Furthermore, it investigates the association between VKORC1 variants and warfarin dose in cardiovascular patients. Finally, this study explores the applied/needed germline pharmacogenetic tests in oncology in the UAE. In 100 healthy Emiratis, variants and star alleles in 100 relevant pharmacogenes were defined by next-generation sequencing. 63% of detected variants were rare, 30% were novel, and 141 variants were novel and damaging. By clinical annotations, filtering variants resulted in 99 clinically actionable variants, from which 44 are highly significant alleles. Revising the results against the clinical pharmacogenetics implementation consortium guidelines demonstrated that 93% of participants have at least one actionable variant with a dosing recommendation. The effect of VKORC1 on warfarin dose was explored in 90 patients. A model built from two VKORC1 variants, rs9923231 and rs61742245, with age, significantly predicted warfarin dose. High incidence rates of adverse chemotherapy effects were reported from 66 pediatric acute lymphoblastic leukemia patients, which indicates the plausibility of pharmacogenetic research to investigate toxicity biomarkers. Few cases had a clinical pharmacogenetic test of TPMT and NUDT15 before starting oral 6-mercaptopurine. Patients who received pharmacogenetic-guided doses suffered from less adverse effects. Exploring the adverse drug effects in a group of 77 breast cancer patients was faced by deficiencies in adverse effects reporting. The reported adverse events suggested suitable candidates for future pharmacogenetic research. This research highlighted population-specific variants, unexplored adverse drug events, and possible pharmacogenomics applications in the UAE. Various research opportunities were illustrated for the scientific community

    2020-04-11/12 DAILY UNM GLOBAL HEALTH COVID-19 BRIEFING

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    Executive Summary: No NM church gatherings. NM a testing champ. Consolidation of elderly care. NM case update. 50-state disaster. Ventilator haggling. Economy reopening planning. PPE decontamination. Hospital ward contamination. Prolonged return to normal. FEMA projections. WHO tracking app. China SEIR model. Hubei epi. Mortality best measure. Covid-19 wave 2. Public should wear masks. Civil liberties. Safe grocery shopping. School closure impact. CDC caretaker guidelines. Psychiatric mobilization. Keep newborns with mom. C-section protocol. Italian obstetrics. Pediatric cardiac catherization. Chinese anesthesiology consensus. Cancer guidelines. Neuro-oncologic Tx. Radiology algorithm. Lung ultrasonography. ARF care. VTE common and predictable. Liver transplantation. Auto-immune treatments. Extracorporeal kidney involvement. Nutrition support. GI endoscopy. No stay-at-home for stroke. Intensive care collaboration. Supine swab collection. Lab tests for severity. Testing assay performance. False negative RT-PCR tests. IgM and IgG serum tests. FDA convalescent plasma. Blood purification device approval. Erythropoietin treatment. Tissue plasminogen activator. ECMO. Lopinavir/ritonavir study results. Immunotherapy review. Vaccine development. Hydroxychloroquine review. Candidates from in silico/virtual screening. Traditional Indian therapies. US trials update. Pathways and risk factors for death. ACE2 polymorphism. Severity in children. Lung tissue replication. Phylogenetic tracing. Text mining dataset. Risk by blood type

    Personalized medicine : the impact on chemistry

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    An effective strategy for personalized medicine requires a major conceptual change in the development and application of therapeutics. In this article, we argue that further advances in this field should be made with reference to another conceptual shift, that of network pharmacology. We examine the intersection of personalized medicine and network pharmacology to identify strategies for the development of personalized therapies that are fully informed by network pharmacology concepts. This provides a framework for discussion of the impact personalized medicine will have on chemistry in terms of drug discovery, formulation and delivery, the adaptations and changes in ideology required and the contribution chemistry is already making. New ways of conceptualizing chemistry’s relationship with medicine will lead to new approaches to drug discovery and hold promise of delivering safer and more effective therapies

    Predicting Dihydropyrimidine Dehydrogenase Deficiency and Related 5-Fluorouracil Toxicity. Opportunities and Challenges of DPYD Exon Sequencing and the Role of Phenotyping Assays

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    Deficiency of dihydropyrimidine dehydrogenase (DPD), encoded by the DPYD gene, is associated with severe toxicity induced by the anti-cancer drug 5-Fluorouracil (5-FU). DPYD genotyping of four recommended polymorphisms is widely used to predict toxicity, yet their prediction power is limited. Increasing availability of next generation sequencing (NGS) will allow us to screen rare variants, predicting a larger fraction of DPD deficiencies. Genotype−phenotype correlations were investigated by performing DPYD exon sequencing in 94 patients assessed for DPD deficiency by the 5-FU degradation rate (5-FUDR) assay. Association of common variants with 5-FUDR was analyzed with the SNPStats software. Functional interpretation of rare variants was performed by in-silico analysis (using the HSF system and PredictSNP) and literature review. A total of 23 rare variants and 8 common variants were detected. Among common variants, a significant association was found between homozygosity for the rs72728438 (c.1974+75A&gt;G) and decreased 5-FUDR. Haplotype analysis did not detect significant associations with 5-FUDR. Overall, in our sample cohort, NGS exon sequencing allowed us to explain 42.5% of the total DPD deficiencies. NGS sharply improves prediction of DPD deficiencies, yet a broader collection of genotype−phenotype association data is needed to enable the clinical use of sequencing data

    Using whole-exome sequencing data in an exome-wide association study approach to identify genetic risk factors influencing acute lymphoblastic leukemia response : a focus on asparaginase complications & vincristine-induced peripheral neuropathy

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    Le traitement de la leucĂ©mie lymphoblastique aiguĂ« (LLA) de l’enfant, une affection d'origine maligne des cellules progĂ©nitrices lymphoĂŻdes, s’est considĂ©rablement amĂ©liorĂ© au cours des derniĂšres dĂ©cennies. En effet, le taux de succĂšs du traitement a dĂ©passĂ© 90% dans des conditions favorables. Cependant, des toxicitĂ©s liĂ©es au traitement peuvent ĂȘtre fatales et entrainer l’interruption ou la cessation du traitement. L'allergie, la pancrĂ©atite et la thrombose sont des complications frĂ©quentes du traitement de la LLA et sont associĂ©es Ă  l'utilisation de l'asparaginase (ASNase), tandis qu’une toxicitĂ© frĂ©quente due Ă  la vincristine (VCR) induit la neuropathie pĂ©riphĂ©rique (VIPN). Étant donnĂ© que l’ajustement du schĂ©ma posologique afin d’augmenter l'efficacitĂ© et diminuer la toxicitĂ© est un processus sensible, ceci demeure un dĂ©fi majeur dans plusieurs protocoles de traitement. La pharmacogĂ©nĂ©tique Ă©tudie comment des altĂ©rations de la composante gĂ©nĂ©tique peuvent influer sur la variabilitĂ© interindividuelle observĂ©e dans la rĂ©ponse au traitement. Une meilleure comprĂ©hension de la base molĂ©culaire de cette variabilitĂ© pourrait amĂ©liorer considĂ©rablement les rĂ©sultats du traitement, en permettant la personnalisation de ce dernier en fonction du profil gĂ©nĂ©tique du patient. Des Ă©tudes rĂ©centes suggĂšrent l’avantage d’appliquer l’analyse de l’exome Ă  la dĂ©couverte de variants associĂ©s Ă  des traits humains complexes ainsi qu’à des phĂ©notypes de rĂ©actions mĂ©dicamenteuses. L'objectif de notre travail Ă©tait d'utiliser les donnĂ©es de sĂ©quençage pour rĂ©aliser des Ă©tudes d'association Ă  l'Ă©chelle de l'exome, y compris des Ă©tapes de filtrage et de validation, afin d'identifier de nouveaux variants gĂ©nĂ©tiques susceptibles de moduler le risque de dĂ©velopper des complications associĂ©es Ă  ASNase et Ă  VIPN. Douze SNP Ă©taient associĂ©s Ă  des complications due Ă  l’ASNase dans la cohorte initiale, dont 3 Ă©taient associĂ©s Ă  une allergie, 3 Ă  une pancrĂ©atite et 6 Ă  une thrombose. Parmi ceux-ci, les variants rs3809849, rs11556218 et rs34708521 des gĂšnes MYBBP1A, IL16 et SPEF2 respectivement ont Ă©tĂ© associĂ©s Ă  des complications multiples et leur association Ă  une pancrĂ©atite a Ă©tĂ© rĂ©pliquĂ©e dans une cohorte de validation indĂ©pendante. En ce qui concerne la VCR, trois variantes ont Ă©tĂ© associĂ©es Ă  la modulation du risque de VIPN: rs2781377 dans SYNE2, rs10513762 dans MRPL47 et rs3803357 dans BAHD1. Nous dĂ©montrons Ă©galement le puissant effet combinĂ© de la prĂ©sence de plusieurs variants de risque pour chacune des toxicitĂ©s Ă©tudiĂ©es et fournissons des modĂšles de prĂ©diction du risque pour la pancrĂ©atite et le VIPN basĂ©s sur la mĂ©thode d’évaluation du risque gĂ©nĂ©tique pondĂ©rĂ©e et qui ont Ă©tĂ© validĂ©s Ă  l’interne. De plus, Ă©tant donnĂ© une association du polymorphisme du gĂšne MYBBP1A avec de multiples issus de traitement, nous avons cherchĂ© Ă  comprendre comment cette altĂ©ration gĂ©nĂ©tique se traduit par des variabilitĂ©s de rĂ©ponse aux traitements Ă  l’ASNase. En utilisant la technique CRISPR-CAS9 pour induire l'inactivation de gĂšnes dans des lignĂ©es cellulaires cancĂ©reuses PANC1 (pancrĂ©atiques) nous avons testĂ© la diffĂ©rence de viabilitĂ© entre les cellules inactivĂ©es et les cellules du type sauvage Ă  la suite de la suppression du gĂšne et du traitement par ASNase. Nos rĂ©sultats suggĂšrent un rĂŽle fonctionnel de ce gĂšne dans la modulation de la viabilitĂ©, de la capacitĂ© de prolifĂ©ration et de la morphologie des cellules knock-out, ainsi que dans leur sensibilitĂ© Ă  l'ASNase, et plaident en outre pour que le gĂšne influence l’issus du traitement de la LLA par ASNase. Le prĂ©sent travail dĂ©montre que l’utilisation de l’approche de sĂ©quençage de l’exome entier dans le contexte d’une Ă©tude d’association Ă  l’échelle de l’exome est une stratĂ©gie valide « sans hypothĂšse » pour identifier de nouveaux marqueurs gĂ©nĂ©tiques modulant l’effet du traitement de la LLA de l’enfant, et souligne l’importance de l'effet synergique de la combinaison des locus Ă  risque.Treatment of childhood acute lymphoblastic leukemia (ALL), a malignant disorder of lymphoid progenitor cells has improved significantly over the past decades and treatment success rates have surpassed 90% in favorable settings. However, treatment-related toxicities can be life-threatening and cause treatment interruption or cessation. Allergy, pancreatitis and thrombosis are common complications of ALL treatment associated with the use of asparaginase (ASNase), while vincristine-induced peripheral neuropathy (VIPN) is a frequent toxicity of vincristine (VCR). It is a sensitive process and a constant struggle to adjust the dosing regimen to ensure maximum efficacy and minimum toxicity. Pharmacogenetics studies show alterations in the genetic component between individuals can influence the observed variability in treatment response. A better understanding of the molecular basis of this variability in drug effect could significantly improve treatment outcome by allowing the personalization of ALL treatment based on the genetic profile of the patient. Emerging reports suggest the benefit of applying exome analysis to uncover variants associated with complex human traits as well as drug response phenotypes. Our objective in this work was to use available whole-exome sequencing data to perform exome-wide association studies followed by stepwise filtering and validation processes to identify novel variants with a potential to modulate the risk of developing ASNase complications and VIPN. Twelve SNPs were associated with ASNase complications in the discovery cohort including 3 associated with allergy, 3 with pancreatitis and 6 with thrombosis. Of those, rs3809849 in MYBBP1A, rs11556218 in IL16 and rs34708521 in SPEF2 genes were associated with multiple complications and their association with pancreatitis was replicated in an independent validation cohort. As for VCR, three variants were associated with modulating the risk of VIPN: rs2781377 in SYNE2, rs10513762 in MRPL47 and rs3803357 in BAHD1. We also demonstrate a strong combined effect of harbouring multiple risk variants for each of the studied toxicities, and provide internally-validated risk-prediction models based on the weighted genetic risk score method for pancreatitis and VIPN. Furthermore, given the association of the polymorphism in MYBBP1A gene with multiple treatment outcomes, we aimed at understanding how this genetic alteration translates into differences in ASNase treatment response through cell-based functional analysis. Using CRISPR-CAS9 technology we produced gene knockout of PANC1 (pancreatic) cancer cell-lines and tested the difference in viability between the knockouts and wild-type cells following gene deletion and ASNase treatment. Our results suggest a functional role of this gene in modulating the viability, proliferation capacity and the morphology of the knockout cells as well as their sensitivity to ASNase and further advocates the implication of the gene in influencing the outcome of ALL treatment with ASNase. The present work demonstrates that using whole-exome sequencing data in the context of exome-wide association study is a successful “hypothesis-free” strategy for identifying novel genetic markers modulating the effect of childhood ALL treatment and highlights the importance of the synergistic effect of combining risk loci
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