Although 70-80% of newly diagnosed ovarian cancer patients respond to first-line therapy, almost all relapse and five-year survival remains below 50%. One strategy to increase five-year survival is prolonging time to relapse by improving first-line therapy response. However, no biomarker today can accurately predict individual response to therapy. In this study, we present analytical and prospective clinical validation of a new test that utilizes primary patient tissue in 3D cell culture to make patient-specific response predictions prior to initiation of treatment in the clinic. Test results were generated within seven days of tissue receipt from newly diagnosed ovarian cancer patients obtained at standard surgical debulking or laparoscopic biopsy. Patients were followed for clinical response to chemotherapy. In a study population of 44, the 32 test-predicted Responders had a clinical response rate of 100% across both adjuvant and neoadjuvant treated populations with an overall prediction accuracy of 89% (39 of 44, pâ<â0.0001). The test also functioned as a prognostic readout with test-predicted Responders having a significantly increased progression-free survival compared to test-predicted Non-Responders, pâ=â0.01. This correlative accuracy establishes the test's potential to benefit ovarian cancer patients through accurate prediction of patient-specific response before treatment.
Prospective Validation of an Ex Vivo, Patient-Derived 3D Spheroid Model for Response Predictions in Newly Diagnosed Ovarian Cancer.
对体外患者来源的 3D 球体模型进行前瞻性验证,以预测新诊断卵巢癌的反应
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作者:Shuford Stephen, Wilhelm Christine, Rayner Melissa, Elrod Ashley, Millard Melissa, Mattingly Christina, Lotstein Alina, Smith Ashley M, Guo Qi Jin, O'Donnell Lauren, Elder Jeffrey, Puls Larry, Weroha S John, Hou Xiaonan, Zanfagnin Valentina, Nick Alpa, Stany Michael P, Maxwell G Larry, Conrads Thomas, Sood Anil K, Orr David, Holmes Lillia M, Gevaert Matthew, Crosswell Howland E, DesRochers Teresa M
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2019 | 起止号: | 2019 Aug 1; 9(1):11153 |
| doi: | 10.1038/s41598-019-47578-7 | 研究方向: | 肿瘤 |
| 疾病类型: | 卵巢癌 | ||
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