Literature DB >> 28400475

An Ex Vivo Platform for the Prediction of Clinical Response in Multiple Myeloma.

Ariosto Silva1, Maria C Silva1, Praneeth Sudalagunta1, Allison Distler2, Timothy Jacobson1, Aunshka Collins2, Tuan Nguyen2, Jinming Song3, Dung-Tsa Chen4, Lu Chen4, Christopher Cubitt5, Rachid Baz2, Lia Perez6, Dmitri Rebatchouk7, William Dalton8, James Greene9, Robert Gatenby10, Robert Gillies1, Eduardo Sontag9, Mark B Meads2,11, Kenneth H Shain12,11.   

Abstract

Multiple myeloma remains treatable but incurable. Despite a growing armamentarium of effective agents, choice of therapy, especially in relapse, still relies almost exclusively on clinical acumen. We have developed a system, Ex vivo Mathematical Myeloma Advisor (EMMA), consisting of patient-specific mathematical models parameterized by an ex vivo assay that reverse engineers the intensity and heterogeneity of chemosensitivity of primary cells from multiple myeloma patients, allowing us to predict clinical response to up to 31 drugs within 5 days after bone marrow biopsy. From a cohort of 52 multiple myeloma patients, EMMA correctly classified 96% as responders/nonresponders and correctly classified 79% according to International Myeloma Working Group stratification of level of response. We also observed a significant correlation between predicted and actual tumor burden measurements (Pearson r = 0.5658, P < 0.0001). Preliminary estimates indicate that, among the patients enrolled in this study, 60% were treated with at least one ineffective agent from their therapy combination regimen, whereas 30% would have responded better if treated with another available drug or combination. Two in silico clinical trials with experimental agents ricolinostat and venetoclax, in a cohort of 19 multiple myeloma patient samples, yielded consistent results with recent phase I/II trials, suggesting that EMMA is a feasible platform for estimating clinical efficacy of drugs and inclusion criteria screening. This unique platform, specifically designed to predict therapeutic response in multiple myeloma patients within a clinically actionable time frame, has shown high predictive accuracy in patients treated with combinations of different classes of drugs. The accuracy, reproducibility, short turnaround time, and high-throughput potential of this platform demonstrate EMMA's promise as a decision support system for therapeutic management of multiple myeloma. Cancer Res; 77(12); 3336-51. ©2017 AACR. ©2017 American Association for Cancer Research.

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Year:  2017        PMID: 28400475     DOI: 10.1158/0008-5472.CAN-17-0502

Source DB:  PubMed          Journal:  Cancer Res        ISSN: 0008-5472            Impact factor:   12.701


  20 in total

1.  PLK1 stabilizes a MYC-dependent kinase network in aggressive B cell lymphomas.

Authors:  Yuan Ren; Chengfeng Bi; Xiaohong Zhao; Tint Lwin; Cheng Wang; Ji Yuan; Ariosto S Silva; Bijal D Shah; Bin Fang; Tao Li; John M Koomen; Huijuan Jiang; Julio C Chavez; Lan V Pham; Praneeth R Sudalagunta; Lixin Wan; Xuefeng Wang; William S Dalton; Lynn C Moscinski; Kenneth H Shain; Julie Vose; John L Cleveland; Eduardo M Sotomayor; Kai Fu; Jianguo Tao
Journal:  J Clin Invest       Date:  2018-11-05       Impact factor: 14.808

Review 2.  Towards personalized computational oncology: from spatial models of tumour spheroids, to organoids, to tissues.

Authors:  Aleksandra Karolak; Dmitry A Markov; Lisa J McCawley; Katarzyna A Rejniak
Journal:  J R Soc Interface       Date:  2018-01       Impact factor: 4.118

3.  Measurement of ex vivo resistance to proteasome inhibitors, IMiDs, and daratumumab during multiple myeloma progression.

Authors:  Zachary J Walker; Michael J VanWyngarden; Brett M Stevens; Diana Abbott; Andrew Hammes; Christophe Langouët-Astrie; Clayton A Smith; Brent E Palmer; Peter A Forsberg; Tomer M Mark; Craig T Jordan; Daniel W Sherbenou
Journal:  Blood Adv       Date:  2020-04-28

4.  BCL2 Amplicon Loss and Transcriptional Remodeling Drives ABT-199 Resistance in B Cell Lymphoma Models.

Authors:  Xiaohong Zhao; Yuan Ren; Matthew Lawlor; Bijal D Shah; Paul M C Park; Tint Lwin; Xuefeng Wang; Kenian Liu; Michelle Wang; Jing Gao; Tao Li; Mousheng Xu; Ariosto S Silva; Kaplan Lee; Tinghu Zhang; John M Koomen; Huijuan Jiang; Praneeth R Sudalagunta; Mark B Meads; Fengdong Cheng; Chengfeng Bi; Kai Fu; Huitao Fan; William S Dalton; Lynn C Moscinski; Kenneth H Shain; Eduardo M Sotomayor; Gang Greg Wang; Nathanael S Gray; John L Cleveland; Jun Qi; Jianguo Tao
Journal:  Cancer Cell       Date:  2019-05-13       Impact factor: 31.743

5.  Pumpless platform for high-throughput dynamic multicellular culture and chemosensitivity evaluation.

Authors:  Zhehuan Chen; Songmin He; Jenny Zilberberg; Woo Lee
Journal:  Lab Chip       Date:  2019-01-15       Impact factor: 6.799

6.  Possibilities and limitations of an in vitro three-dimensional bone marrow model for the prediction of clinical responses in patients with relapsed multiple myeloma.

Authors:  Maaike V J Braham; Jacqueline Alblas; Wouter J A Dhert; F Cumhur Öner; Monique C Minnema
Journal:  Haematologica       Date:  2019-04-19       Impact factor: 9.941

7.  IAP and HDAC inhibitors interact synergistically in myeloma cells through noncanonical NF-κB- and caspase-8-dependent mechanisms.

Authors:  Liang Zhou; Yu Zhang; Mark B Meads; Yun Dai; Yanxia Ning; Xiaoyan Hu; Lin Li; Kanika Sharma; Jewel Nkwocha; Rebecca Parker; Danny Bui; Jacquelyn McCarter; Lora Kramer; Cullen Purcell; Praneeth R Sudalagunta; Rafael R Canevarolo; Maria D Coelho Siqueira Silva; Gabriel De Avila; Raghunandan Reddy Alugubelli; Ariosto S Silva; Maciej Kmeiciak; Andrea Ferreira-Gonzalez; Kenneth H Shain; Steven Grant
Journal:  Blood Adv       Date:  2021-10-12

8.  A 3D-Bioprinted Multiple Myeloma Model.

Authors:  Di Wu; Zongyi Wang; Jun Li; Yan Song; Manuel Everardo Mondragon Perez; Zixuan Wang; Xia Cao; Changliang Cao; Sushila Maharjan; Kenneth C Anderson; Dharminder Chauhan; Yu Shrike Zhang
Journal:  Adv Healthc Mater       Date:  2021-09-23       Impact factor: 11.092

9.  High-Throughput Drug Screening and Multi-Omic Analysis to Guide Individualized Treatment for Multiple Myeloma.

Authors:  David G Coffey; Andrew J Cowan; Bret DeGraaff; Timothy J Martins; Niall Curley; Damian J Green; Edward N Libby; Rebecca Silbermann; Sylvia Chien; Jin Dai; Alicia Morales; Ted A Gooley; Edus H Warren; Pamela S Becker
Journal:  JCO Precis Oncol       Date:  2021-04-06

Review 10.  Tumor Chemosensitivity Assays Are Helpful for Personalized Cytotoxic Treatments in Cancer Patients.

Authors:  Engin Ulukaya; Didem Karakas; Konstantinos Dimas
Journal:  Medicina (Kaunas)       Date:  2021-06-19       Impact factor: 2.430

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