| Literature DB >> 31367835 |
Mingjia Li1, Daniel Spakowicz2,3, Jarred Burkart2, Sandip Patel2, Marium Husain2, Kai He2, Erin M Bertino2, Peter G Shields2, David P Carbone2, Claire F Verschraegen2, Carolyn J Presley2, Gregory A Otterson2, Kari Kendra2, Dwight H Owen4.
Abstract
BACKGROUND: The neutrophil to lymphocyte ratio (NLR) is known to be prognostic for patients with advanced cancers treated with immune checkpoint inhibitors (ICI), but has generally been evaluated as a single threshold value at baseline. We evaluated NLR at baseline and within first month during treatment in patients who received ICI for advanced cancer to evaluate the prognostic value of baseline and of changes from baseline to on-treatment NLR.Entities:
Keywords: Immune checkpoint inhibitor; Immunotherapy; NLR; Neutrophil to lymphocyte ratio; Prognosis
Mesh:
Substances:
Year: 2019 PMID: 31367835 PMCID: PMC6751277 DOI: 10.1007/s00432-019-02982-4
Source DB: PubMed Journal: J Cancer Res Clin Oncol ISSN: 0171-5216 Impact factor: 4.553
Patient characteristics
| Total patients | 509 | ||||
|---|---|---|---|---|---|
| Male | 314 (61.7%) | Baseline NLR | 5.7 (mean) | Time to repeat lab | |
| Female | 195 (38.3%) | Treatment NLR | 6.24 (mean) | Median | 21 days |
| Age | 62.7 (mean) | BMI | 28.86 | ||
| Cancer types | Stage | Immunotherapy | |||
| NSCLC | 111 (21.8%) | 3 | 69 (13.6%) | Ipilimumab | 163 (32.0%) |
| Melanoma | 254 (49.9%) | 4 | 427 (83.9%) | Nivolumab | 202 (39.7%) |
| Renal cell Ca | 68 (13.4%) | Other | 13 (2.5%) | Pembrolizumab | 88 (17.3%) |
| Head and neck | 47 (9.2%) | Nivo + Ipi | 34 (6.7%) | ||
| Bladder cancer | 19 (3.7%) | Other | 22 (4.2%) | ||
| Sarcoma | 10 (2.0%) | ||||
Fig. 1Kaplan–Meier survival analysis for patients with baseline is represented in dotted line and on-treatment in solid line. Patients were grouped based on NLR < 5 and NLR ≥ 5. Patients with lower NLR at baseline and on-treatment were associated with better prognosis
Fig. 2The change in NLR from baseline to on-immunotherapy measurements shows curvilinear character. a Survival curve stratifying by change in NLR of greater than 0.9. b Loess-smoothed fit of the change in NLR and months to last follow-up or death across several cancer types. b Cox proportional hazards model showing a significant polynomial term describing the change in NLR. The cubic term yielded a lower log likelihood than the quadratic change in NLR and the quadratic term did not significantly improve the model in addition to the cubic term
Fig. 3Kaplan–Meier survival analysis showing change in NLR from baseline to on-treatment based on the percentage of change. Patient with modest decrease in NLR had the longest median OS