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R. Natale
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MA08 - Treatment Monitoring in Advanced NSCLC (ID 386)
- Event: WCLC 2016
- Type: Mini Oral Session
- Track: Advanced NSCLC
- Presentations: 1
- Moderators:R. Perez-Soler, T. Reungwetwattana
- Coordinates: 12/06/2016, 11:00 - 12:30, Lehar 3-4
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MA08.01 - A Highly Sensitive Next-Generation Sequencing Platform for Detection of NSCLC EGFR T790M Mutation in Urine and Plasma (ID 4637)
11:00 - 11:06 | Author(s): R. Natale
- Abstract
- Presentation
Background:
Non-invasive genotyping of NSCLC patients by circulating tumor (ct)DNA is a promising alternative to tissue biopsies. However, ctDNA EGFR analysis remains challenging in patients with intrathoracic disease, with a reported 26-57% T790M mutation detection rate in plasma (Karlovich et al., Clin Cancer Res 2016; Wakelee et al., ASCO 2016). We investigated whether a mutation enrichment NGS could improve mutation detection in plasma and urine from TIGER-X, a phase 1/2 study of rociletinib in patients with EGFR mutation-positive advanced NSCLC.
Methods:
The therascreen (Qiagen) or cobas (Roche) EGFR test was used for EGFR T790M analysis in tumor biopsies. Urine and plasma were analyzed by trovera mutation enrichment NGS assay (Trovagene).
Results:
Of 174 matched tissue, plasma and urine specimens, 145 (83.3%) were T790M+ by central tissue testing, 142 (81.6%) were T790M+ by plasma, and 139 (79.9%) were T790M+ by urine. Urine and plasma combined identified 165 cases (94.8%) as T790M+. Of 25 cases positive by ctDNA but negative/inadequate by tissue, 16 were double-positive in plasma and urine, unlikely to be false positive (Figure 1). T790M detection rate was higher for extrathoracic (n=119) vs intrathoracic (n=55) disease in plasma (87.4% vs 69.1%, p=0.006) but not urine (81.5% vs 76.4%, p=0.42). Combination of urine and plasma identified T790M in 92.7% of intrathoracic and 95.8% of extrathoracic cases (p=0.47). In T790M+ patients, objective response rate was similar whether T790M mutation was identified by tissue, plasma or urine: 37.4%, 33.1% and 36.6%, respectively. 4 of 9 patients T790M+ by urine but negative by tissue responded, and 2 of 8 patients T790M+ by plasma but negative by tissue responded.
Conclusion:
Mutation enrichment NGS testing by urine and plasma combined identified 94.8% of T790M+ cases. Combination of urine and plasma may be considered before tissue testing in EGFR TKI resistant NSCLC, including patients without extrathoracic metastases. Figure 1
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P3.02c - Poster Session with Presenters Present (ID 472)
- Event: WCLC 2016
- Type: Poster Presenters Present
- Track: Advanced NSCLC
- Presentations: 1
- Moderators:
- Coordinates: 12/07/2016, 14:30 - 15:45, Hall B (Poster Area)
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P3.02c-051 - A Pre-Treatment Serum Test Based on Complement and IL-10 Pathways Identifies Patients Benefiting from the Addition of Bavituximab to Docetaxel (ID 7068)
14:30 - 14:30 | Author(s): R. Natale
- Abstract
Background:
SUNRISE, a global, double-bind, Phase III trial of docetaxel (D) plus bavituximab (B) or D plus placebo (P) in previously treated non-squamous non-small cell lung cancer, demonstrated similar overall survival (OS) in both treatment arms. Mass spectrometry and correlative analysis were used to create a test able to identify a subgroup of patients benefitting from the addition of B to D.
Methods:
Pre-treatment serum samples were available for 197 of the first 200 subjects enrolled in the trial. Mass spectra could be generated for 193 samples using the Deep MALDI method (Duncan et al, ASMS 2013), processed and features (peaks) identified. Mass spectral (MS) features associated with various biological functions were identified using a gene set enrichment analysis approach. Analysis of scores based on these MS feature, subsets indicated that in patients with high complement activation outcome depended on IL-10 activation in D+B but not in D+P. A test using the MS features associated with these functions was created to reliably identify a patient subgroup associated with clinical benefit using modern machine learning methods.
Results:
Complement activation, as assessed by a classifier trained using related MS features, was a prognostic factor in both treatment arms, with high activation associated with poorer clinical outcome (OS HR = 0.54, log-rank p = 0.013 for D+B; OS HR = 0.60, log-rank p = 0.040 for D+P). Within the subgroup with high complement activation [N=50 (D+B); N=54 (D+P)], a second classifier using features related to IL-10 activation was able to isolate a subgroup of patients showing numerical benefit from the addition of B [median OS 5.9 months (D+P), 12.5 months (D+B)]. The remaining subgroup showed no benefit from addition of B [median OS 10.4 months (D+P), 5.6 months (D+B)]. Blinded validation of the test in the remainder 397 patients randomized in SUNRISE is will be presented.
Conclusion:
Proteomic and correlative approaches identified complement activation and low IL-10 levels as important pathways for predicting improved outcomes of patient treatment with D+B, in line with preclinical work on B’s mechanism of action. The test resulting from this work will undergo blinded independent validation.