Peer review process
Not revised: This Reviewed Preprint includes the authors’ original preprint (without revision), an eLife assessment, public reviews, and a provisional response from the authors.
Read more about eLife’s peer review process.Editors
- Reviewing EditorNeeha ZaidiJohns Hopkins University, Baltimore, United States of America
- Senior EditorWafik El-DeiryBrown University, Providence, United States of America
Reviewer #1 (Public Review):
Summary:
The authors of the study are trying to show that RNAseq can be used for neoantigen prediction and that the machine learning approach to the prediction can reveal very useful information for the selection of neoantigens for personalized antitumor vaccination.
Strengths:
The authors demonstrated that RNA expression of a neoantigen is a very important factor in the selection of peptides for the creation of personalized vaccines. They proved in vivo that in silico-predicted neoantigens can trigger an antitumor response in mice.
Weaknesses:
The selection of the peptides for vaccination is not clear. Some peptides were selected before and some after processing. What processing is also not clear. The authors didn't provide the full list of peptides before and after processing, please add those. And it wasn't clear that these peptides were previously published. Looking at the previously published table with peptide from B16 F10 (https://www.nature.com/articles/s41598-021-89927-5/tables/3), there are other genes with high expression, e.g. Tab2, Tm9sf3 that have higher expression than Herc6, please clarify the choice.
It's not clear how many mice were used for each group in each experiment, please add this information to the text and figures. It would be good to add this, to aid the understanding of a broader audience.
Please provide information about what software was used for statistical analysis.
Reviewer #2 (Public Review):
Summary:
The authors develop a new neoantigen prediction tool (NAP-CNB) which primarily predicts neoantigens based on expression (RNAseq) and ranks mutations using binding affinity. The validated predicted neoantigens in mice demonstrate that neoantigens with higher expression (but not necessarily the highest immunogenicity) lead to the greatest tumor control.
Strengths:
There is in vivo validation of the neoantigens.
Demonstrates comparability to other prediction algorithms that are commonly used.
Demonstrates that expression holds a higher value than T-cell responses in actual tumor control.
Weaknesses:
Binding affinity does not always predict immune responses or tumor control in vivo which is used as part of the selection criteria.