| Literature DB >> 31849976 |
Elizabeth S Borden1,2, Paul Kang3, Heini M Natri2, Tanya N Phung2, Melissa A Wilson2, Kenneth H Buetow2, Karen Taraszka Hastings1.
Abstract
A low percentage of actinic keratoses progress to develop into cutaneous squamous cell carcinoma. The immune mechanisms that successfully control or eliminate the majority of actinic keratoses and the mechanisms of immune escape by invasive squamous cell carcinoma are not well-understood. Here, we took a systematic approach to evaluate the neoantigens present in actinic keratosis and cutaneous squamous cell carcinoma specimens. We compared the number of mutations, the number of neoantigens predicted to bind MHC class I, and the number of neoantigens that are predicted to bind MHC class I and be recognized by a T cell receptor in actinic keratoses and cutaneous squamous cell carcinomas. We also considered the relative binding strengths to both MHC class I and the T cell receptor in a fitness cost model that allows for a comparison of the immune recognition potential of the neoantigens in actinic keratosis and cutaneous squamous cell carcinoma samples. The fitness cost was subsequently adjusted by the expression rates of the neoantigens to examine the role of neoantigen expression in tumor immune evasion. Our analyses indicate that, while the number of mutations and neoantigens are not significantly different between actinic keratoses and cutaneous squamous cell carcinomas, the predicted immune recognition of the neoantigen with the highest expression-adjusted fitness cost is lower for cutaneous squamous cell carcinomas compared with actinic keratoses. These findings suggest a role for the down-regulation of expression of highly immunogenic neoantigens in the immune escape of cutaneous squamous cell carcinomas. Furthermore, these findings highlight the importance of incorporating additional factors, such as the quality and expression of the neoantigens, rather than focusing solely on tumor mutational burden, in assessing immune recognition potential.Entities:
Keywords: MHC class I; T cell receptor; actinic keratosis; cancer; cutaneous squamous cell carcinoma; immunoediting; neoantigen
Mesh:
Substances:
Year: 2019 PMID: 31849976 PMCID: PMC6896054 DOI: 10.3389/fimmu.2019.02799
Source DB: PubMed Journal: Front Immunol ISSN: 1664-3224 Impact factor: 7.561
Summary of the samples available from each patient.
| WES normal skin | X | X | X | X | X | X | X | X | |
| WES saliva | x | x | x | x | x | x | X | ||
| WES AK | X | X | X | X | X | X | X | ||
| WES cuSCC | X | X | X, X | X | X | X | |||
| RNAseq normal skin | x | x | x | x | x | x | x | ||
| RNAseq AK | x | X | X | x | X | x | x | x | x |
| RNAseq cuSCC | X | X | x, x | X | X | x | x | x |
X denotes any samples used in our analyses, and x denotes samples available that were not used.
Summary of the number of somatic mutations, 21 base pair peptides (predicted from only non-synonymous mutations), 9 base pair binding neoantigens, and immunogenic neoantigens for each patient sample.
| Patient 1 AK | 50 | 2 | 26 | 0 | 0 |
| Patient 2 AK | 1,697 | 1,191 | 15,480 | 442 | 112 |
| Patient 2 cuSCC | 2,540 | 2,185 | 28,403 | 190 | 41 |
| Patient 3 AK | 617 | 317 | 4,121 | 85 | 21 |
| Patient 3 cuSCC | 5,385 | 2,941 | 38,231 | 1,297 | 339 |
| Patient 4 AK | 75 | 2 | 27 | 2 | 0 |
| Patient 4 cuSCC1 | 83 | 12 | 156 | 2 | 1 |
| Patient 4 cuSCC2 | 47 | 1 | 13 | 0 | 0 |
| Patient 5 AK | 346 | 197 | 2,561 | 88 | 28 |
| Patient 5 cuSCC | 11,504 | 7,678 | 99,799 | 3,600 | 965 |
| Patient 6 cuSCC | 389 | 245 | 3,185 | 45 | 8 |
| Patient 8 cuSCC | 82 | 12 | 157 | 7 | 0 |
| Patient 10 AK | 133 | 24 | 312 | 2 | 0 |
| Patient 12 AK | 53 | 0 | 0 | 0 | 0 |
Binding neoantigens are those neoantigens with <500 nM dissociation constant from MHC class I, and immunogenic neoantigens are those neoantigens with a non-zero TCR-binding potential.
Figure 1(A) Comparison of the number of somatic mutations in each of the samples for AK and cuSCC. (B) In blue, comparison of the number of neoantigens predicted to have an MHC class I dissociation constant of <500 nM (termed Binding Neoantigens) in AK and cuSCC. In red, comparison of the number of neoantigens predicted to have an MHC class I dissociation constant of <500 nM and a non-zero TCR recognition potential (termed Immunogenic Neoantigens) in AK and cuSCC. (C) Correlation between the number of somatic mutations and the number of binding neoantigens (blue) and immunogenic neoantigens (red). Each data point represents an AK or cuSCC sample. Numbers for AK and cuSCC indicate the patient sample from Table 1 used for the analyses. Note that the AK and cuSCC samples from an individual patient are separate lesions.
Figure 2(A) Ratio of immunogenic neoantigens to binding neoantigens for AK and cuSCC. (B) Ratio of those immunogenic neoantigens with a TCR recognition potential of ≥0.01 to the binding neoantigens. Numbers for AK and cuSCC indicate the patient sample from Table 1 used for the analyses. *p < 0.05.
Figure 3(A) Average dissociation constant (Kd) for mutant (MT) peptide:MHC in AK and cuSCC. (B) Average amplitude of MHC binding calculated as the ratio of the dissociation constant (Kd) for wild-type (WT) peptide:MHC to the dissociation constant (Kd) of the mutant (MT) peptide:MHC in AK and cuSCC. (C) Average TCR recognition potential for AK and cuSCC. Numbers for AK and cuSCC indicate the patient sample from Table 1 used for the analyses. *p < 0.05.
Figure 4(A) Average fitness cost for AK compared to cuSCC. Fitness cost is defined as the MHC-binding amplitude multiplied by the TCR recognition potential. (B) Maximum (Max) fitness cost for AK compared to cuSCC. Maximum fitness cost is defined as the highest calculated fitness cost across all neoantigens for each lesion. (C) Adjusted average (Avg) fitness cost for AK compared to cuSCC. Adjusted fitness cost is defined as the MHC-binding amplitude multiplied by the TCR recognition potential multiplied by the ratio of RPKM expression for the individual neoantigen to the sum of the RPKM expression of all neoantigens. (D) Maximum adjusted fitness cost for AK compared to cuSCC. Maximum adjusted fitness cost is defined as the highest calculated fitness cost after adjustment for RNA expression. Numbers for AK and cuSCC indicate the patient sample from Table 1 used for the analyses. *p < 0.05.