| Literature DB >> 28923537 |
Arthur E Frankel1, Laura A Coughlin2, Jiwoong Kim3, Thomas W Froehlich4, Yang Xie3, Eugene P Frenkel4, Andrew Y Koh5.
Abstract
This is the first prospective study of the effects of human gut microbiota and metabolites on immune checkpoint inhibitor (ICT) response in metastatic melanoma patients. Whereas many melanoma patients exhibit profound response to ICT, there are fewer options for patients failing ICT-particularly with BRAF-wild-type disease. In preclinical studies, specific gut microbiota promotes regression of melanoma in mice. We therefore conducted a study of the effects of pretreatment gut microbiota and metabolites on ICT Response Evaluation Criteria in Solid Tumors response in 39 metastatic melanoma patients treated with ipilimumab, nivolumab, ipilimumab plus nivolumab (IN), or pembrolizumab (P). IN yielded 67% responses and 8% stable disease; P achieved 23% responses and 23% stable disease. ICT responders for all types of therapies were enriched for Bacteroides caccae. Among IN responders, the gut microbiome was enriched for Faecalibacterium prausnitzii, Bacteroides thetaiotamicron, and Holdemania filiformis. Among P responders, the microbiome was enriched for Dorea formicogenerans. Unbiased shotgun metabolomics revealed high levels of anacardic acid in ICT responders. Based on these pilot studies, both additional confirmatory clinical studies and preclinical testing of these bacterial species and metabolites are warranted to confirm their ICT enhancing activity.Entities:
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Year: 2017 PMID: 28923537 PMCID: PMC5602478 DOI: 10.1016/j.neo.2017.08.004
Source DB: PubMed Journal: Neoplasia ISSN: 1476-5586 Impact factor: 5.715
Summary of Clinical Characteristics of Melanoma Patients Who Underwent Immune Checkpoint Inhibitor Therapy at the University of Texas Southwestern Medical Center (n = 39)
| Dates of Therapy | 2016-2017 |
|---|---|
| Age (years) | 37-92; |
| Gender | Female, 9 (23%); Male, 30 (77%) |
| Ethnicity | 37 Caucasian (94%), 1 Hispanic (2%), 1 African-American (2%) |
| Number of metastatic sites | One, 23 (59%); Two, 13 (33%); Three, 3 (8%) |
| Metastases site | Adrenal, 3 (8%); Bone, 3 (8%); Liver, 7 (18%); lung, 21 (54%); Lymph nodes, 15 (38%); SQ, 8 (21%) |
| Antibiotic usage prior to and/or during ICT therapy | 3 (8%) |
| Probiotic therapy | 1 (3%) |
Individual Clinical Characteristics of Melanoma Patients Who Underwent Immune Checkpoint Inhibitor Therapy at the University of Texas Southwestern Medical Center (n = 39)
| Patient Identifier | Sex | Age | Site of Metastases | ICT Therapy | Change in Tumor Size (%) | RECIST Category |
|---|---|---|---|---|---|---|
| P7 | M | 63 | Lung | IN | −4 | Stable |
| P8 | M | 70 | Lung | IN | −55 | Response |
| P10 | M | 75 | Lung | IN | −83 | Response |
| P14 | F | 69 | Lung | IN | −60 | Response |
| P16 | M | 80 | Lung, Nodes | P | 53 | Progression |
| P17 | M | 68 | Nodes | N | −70 | Response |
| P22 | M | 64 | Lung, Liver | P | 81 | Progression |
| P23 | M | 76 | Lung | IN | −55 | Response |
| P24 | M | 44 | Nodes | IN | 136 | Progression |
| P25 | F | 60 | SQ | IN | −100 | Response |
| P28 | F | 68 | Lung, Liver | IN | 85 | Progression |
| P30 | M | 54 | Lung, Liver | IN | 100 | Progression |
| P32 | F | 57 | Nodes, Bone | IN | 100 | Progression |
| P33 | F | 74 | Nodes | P | −36 | Response |
| P34 | M | 57 | Liver | IN | −66 | Response |
| P35 | M | 63 | Nodes | IN | −30 | Response |
| P39 | M | 48 | Nodes, SQ | P | −68 | Response |
| P42 | M | 67 | SQ | P | 100 | Progression |
| P44 | F | 63 | Nodes | P | −27 | Stable |
| P45 | M | 43 | Lung, Nodes, SQ | P | −14 | Stable |
| P46 | M | 68 | SQ, Adrenal | IN | 116 | Progression |
| P48 | M | 86 | Lung | P | 0 | Stable |
| P49 | M | 84 | Lung, Liver, Nodes | P | 125 | Progression |
| P52 | M | 41 | Bone | IN | −100 | Response |
| P53 | M | 74 | Lung, Adrenal | IN | 100 | Progression |
| P54 | M | 79 | Nodes, SQ | IN | 100 | Progression |
| P55 | F | 37 | SQ, Adrenal | IN | −100 | Response |
| P56 | M | 66 | Lung, Nodes | P | 46 | Progression |
| P57 | M | 70 | Liver | I | −100 | Response |
| P58 | M | 52 | Nodes | P | −48 | Response |
| P59 | M | 78 | Lung | IN | −10 | Stable |
| P61 | M | 58 | Lung | IN | −40 | Response |
| P63 | M | 63 | Nodes, SQ | IN | −100 | Response |
| P64 | F | 77 | Lung, Liver, Bone | P | 100 | Progression |
| P65 | M | 69 | Liver | P | 131 | Progression |
| P66 | M | 80 | Lung, Nodes | IN | 61 | Progression |
| P67 | M | 83 | Lung | IN | −34 | Response |
| P68 | M | 92 | Lung | IN | −34 | Response |
| P69 | F | 55 | Lung | IN | −87 | Response |
I, ipilumumab; N, nivolmab; P, pembrolizumab.
Figure 1Study schema.
Figure 2MSS identifies specific bacterial species that are enriched in the gut microbiomes of melanoma patients who are responding to ICT therapy. Relative abundance of gut bacterial taxa as determined by MetaPhlAn analysis of MSS data generated from fecal specimens collected from melanoma patients prior to receiving ipilimumab/nivolumab, pembrolizumab, ipilimumab alone, or nivolumab alone. Differential taxonomic abundance was analyzed by linear discriminate analysis coupled with effect size measurements (LEfSe) projected as a histogram (A, C and E) or cladrogram (B, D and F). All listed bacterial groups were significantly (P < .05, Kruskal-Wallis test) enriched for their respective groups (responder versus progressive).
Figure 3Unbiased metabolomics analysis of stool metabolites from adult melanoma patients prior to treatment with ICT. UPLC-MS–based global profiling of metabolites in feces of adult melanoma patients receiving immune checkpoint inhibitor therapy (n = 39). Data were log transformed and mean centered. Venn diagrams of metabolites (A) significantly increased or (B) decreased when comparing the ICT responder group versus the progressive group for all ICTs, IN only, and P only. The heat maps show the normalized relative abundances of stool metabolites comparing responders to those with progressive disease for (C) all ICTs, (D) IN only, and (E) P only (q < 0.05, unpaired t test with Welch's correction followed by false discovery rate correction). Orange colors indicate relative abundance increase, and blue indicates relative abundances decrease (responders:progressive, log2 transformed).