Peer Review History

Original SubmissionAugust 21, 2021
Decision Letter - Murugappan M, Editor

PONE-D-21-27133Variational Autoencoders for Audio Based Data Augmentation to Enhance Respiratory Disease ClassificationPLOS ONE

Dear Dr. Patil,

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Murugappan M, Ph.D

Academic Editor

PLOS ONE

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Reviewers' comments:

Reviewer's Responses to Questions

Comments to the Author

1. Is the manuscript technically sound, and do the data support the conclusions?

The manuscript must describe a technically sound piece of scientific research with data that supports the conclusions. Experiments must have been conducted rigorously, with appropriate controls, replication, and sample sizes. The conclusions must be drawn appropriately based on the data presented.

Reviewer #1: Yes

Reviewer #2: Yes

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2. Has the statistical analysis been performed appropriately and rigorously?

Reviewer #1: Yes

Reviewer #2: Yes

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3. Have the authors made all data underlying the findings in their manuscript fully available?

The PLOS Data policy requires authors to make all data underlying the findings described in their manuscript fully available without restriction, with rare exception (please refer to the Data Availability Statement in the manuscript PDF file). The data should be provided as part of the manuscript or its supporting information, or deposited to a public repository. For example, in addition to summary statistics, the data points behind means, medians and variance measures should be available. If there are restrictions on publicly sharing data—e.g. participant privacy or use of data from a third party—those must be specified.

Reviewer #1: Yes

Reviewer #2: Yes

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4. Is the manuscript presented in an intelligible fashion and written in standard English?

PLOS ONE does not copyedit accepted manuscripts, so the language in submitted articles must be clear, correct, and unambiguous. Any typographical or grammatical errors should be corrected at revision, so please note any specific errors here.

Reviewer #1: Yes

Reviewer #2: Yes

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5. Review Comments to the Author

Please use the space provided to explain your answers to the questions above. You may also include additional comments for the author, including concerns about dual publication, research ethics, or publication ethics. (Please upload your review as an attachment if it exceeds 20,000 characters)

Reviewer #1: This paper discusses the application of deep neural VAE models to improve classification performance on diagnosing health conditions using recorded lung sounds from patients. The primary application of the VAE is the generation of additional samples for minority classes to overcome the overall skew of the dataset. Towards this goal, the authors investigate multiple augmentation strategies - MLP VAE, CNN VAE, and conditional VAE.

My main concerns with the paper are two fold -

1) Reproducibility and reuse - The key contribution of the paper lies in the precise augmentation methods described in section 6.3. I commend the authors for including architectural details, however, I am still unclear on how the conditional VAE was applied to the generation problem. What was the conditioning factor for generation? The second question I have is, how did the authors control the number of samples generated per condition from the unconditioned models in Table 3? When we run the unconditioned model, the samples may not be generated in the right ratio and may continue to be imbalanced.

So for point 1 - the authors need to discuss precisely how each model was run on the dataset, what was learned, what was the data generation strategy from the conditional and unconditional models, how these two models differed in terms of execution.

2) Originality - The concept of applying data augmentation strategies to most types of data (including audio) is fairly well explored. But more importantly, a few cited references such as [20] have considered similar directions as the proposed work. I would like to see a more thorough analysis of the knowledge gaps and shortcomings of the earlier papers that are bridged by the current study.

These two points should be satisfactorily addressed before the paper is in a publishable form.

Reviewer #2: Some concerns that need to be addressed:

1. Though the work address the problem of imbalanced signal data for respiratory disease diagnosis, the performance analysis is not clear. Data augmentation can only be used for training data. The validation should be done only on original test data.

2. The similarity of the augmented signal and original signal should be analyzed even more rigorously for classes for which the available data is very much limited namely for classes.

3. The data augmentation leads to only marginal increase in signal classification accuracy. Justify?

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Reviewer #1: Yes: Adit Krishnan

Reviewer #2: Yes: Palani Thanaraj

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Revision 1

Original Manuscript ID: PONE-D-21-27133

Original Article Title: Variational Autoencoders for Audio Based Data Augmentation to Enhance Respiratory Disease Classification

To: PLOS ONE Editor

Re: Response to reviewers

Dear Editor,

Thank you for allowing a resubmission of our manuscript, with an opportunity to address the reviewers’ comments.

We are uploading (a) our point-by-point response to the comments (below) (response to reviewers), (b) an updated manuscript with yellow highlighting indicating changes, and (c)a clean updated manuscript without highlights (PDF main document).

Best regards,

Jane Saldanah,Shaunak Chakraborty,Shruti Patil ,Satish Kumar, Ketan Kotecha and Anand Nayyar

Reviewer#1, Concern # 1: The authors need to discuss precisely how each model was run on the dataset, what was learned, what was the data generation strategy from the conditional and unconditional models, how these two models differed in terms of execution.

Author response: Thank you for your kind suggestion.

Author action: We have added explanation about the training procedure and data generation strategy for the VAE models in section 6.3 (highlighted in yellow).

Reviewer#1, Concern # 2: The concept of applying data augmentation strategies to most types of data (including audio) is fairly well explored. But more importantly, a few cited references such as [20] have considered similar directions as the proposed work. I would like to see a more thorough analysis of the knowledge gaps and shortcomings of the earlier papers that are bridged by the current study.

Author response: Thank you for your suggestions.

Author action: We have added two paragraphs on page number 10 in section 4 / Research Gaps describing the novelties of our work and the issues we noticed in previous papers, such as [30], that have been addressed in this study.

Reviewer#2, Concern # 1: Though the work address the problem of imbalanced signal data for respiratory disease diagnosis, the performance analysis is not clear. Data augmentation can only be used for training data. The validation should be done only on original test data.

Author response: Thank you for the suggestion.

Author action: We have added the details of the train and test sets used for building the VAEs and classification models in section 3 / Exploratory Data Analysis (highlighted in yellow). The system architecture diagram has also been updated to give a clearer picture of the performance evaluation of the classifiers. As per the suggestion received, the synthetic data was used for augmenting the training set only. Hence, we re-evaluated the performance of the classifiers on the hold-out test set, containing real audio samples only. The updated performance metrics, including the confusion matrices, statistical analysis and other graphs have been reported in the manuscript.

Reviewer#2, Concern # 2: The similarity of the augmented signal and original signal should be analyzed even more rigorously for classes for which the available data is very much limited, namely for classes.

Author response: Thank you for your kind suggestion.

Author action: We have further elaborated our contributions in sections 7.1.3 and 7.1.4. We have measured the cross-correlation and Mel cepstral distortion between the real and synthetic samples for all minority classes to elaborate the similarity of the synthetic samples w.r.t the real samples.

Reviewer#2, Concern # 2: The data augmentation leads to only a marginal increase in signal classification accuracy. Justify?

Author response: Thank you for the suggestion.

Author action: On observing the performance metrics of the classifiers aggregated over all classes, it does seem like the augmentation had a little improvement. However, upon comparing the performance metrics for the minority classes with the imbalanced and augmented training sets, a significant difference can be observed. For example, minority classes such as LRTI were being completely misclassified with the imbalanced training set ; post augmentation a significant improvement in the performance metrics can be observed.

Attachments
Attachment
Submitted filename: VAE Paper Review response.docx
Decision Letter - Murugappan M, Editor

Data Augmentation Using Variational Autoencoders for Improvement of Respiratory Disease Classification

PONE-D-21-27133R1

Dear Dr. Patil,

We’re pleased to inform you that your manuscript has been judged scientifically suitable for publication and will be formally accepted for publication once it meets all outstanding technical requirements.

Within one week, you’ll receive an e-mail detailing the required amendments. When these have been addressed, you’ll receive a formal acceptance letter and your manuscript will be scheduled for publication.

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If your institution or institutions have a press office, please notify them about your upcoming paper to help maximize its impact. If they’ll be preparing press materials, please inform our press team as soon as possible -- no later than 48 hours after receiving the formal acceptance. Your manuscript will remain under strict press embargo until 2 pm Eastern Time on the date of publication. For more information, please contact onepress@plos.org.

Kind regards,

Murugappan M, Ph.D

Academic Editor

PLOS ONE

Additional Editor Comments (optional):

Reviewers' comments:

Reviewer's Responses to Questions

Comments to the Author

1. If the authors have adequately addressed your comments raised in a previous round of review and you feel that this manuscript is now acceptable for publication, you may indicate that here to bypass the “Comments to the Author” section, enter your conflict of interest statement in the “Confidential to Editor” section, and submit your "Accept" recommendation.

Reviewer #1: All comments have been addressed

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2. Is the manuscript technically sound, and do the data support the conclusions?

The manuscript must describe a technically sound piece of scientific research with data that supports the conclusions. Experiments must have been conducted rigorously, with appropriate controls, replication, and sample sizes. The conclusions must be drawn appropriately based on the data presented.

Reviewer #1: Partly

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3. Has the statistical analysis been performed appropriately and rigorously?

Reviewer #1: Yes

**********

4. Have the authors made all data underlying the findings in their manuscript fully available?

The PLOS Data policy requires authors to make all data underlying the findings described in their manuscript fully available without restriction, with rare exception (please refer to the Data Availability Statement in the manuscript PDF file). The data should be provided as part of the manuscript or its supporting information, or deposited to a public repository. For example, in addition to summary statistics, the data points behind means, medians and variance measures should be available. If there are restrictions on publicly sharing data—e.g. participant privacy or use of data from a third party—those must be specified.

Reviewer #1: Yes

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5. Is the manuscript presented in an intelligible fashion and written in standard English?

PLOS ONE does not copyedit accepted manuscripts, so the language in submitted articles must be clear, correct, and unambiguous. Any typographical or grammatical errors should be corrected at revision, so please note any specific errors here.

Reviewer #1: Yes

**********

6. Review Comments to the Author

Please use the space provided to explain your answers to the questions above. You may also include additional comments for the author, including concerns about dual publication, research ethics, or publication ethics. (Please upload your review as an attachment if it exceeds 20,000 characters)

Reviewer #1: 1) The authors have presented a fairly thorough analysis of the three variational autoencoder models leveraged for data augmentation for the minority classes - MLP, CNN, and Conditional VAEs. The generated synthetic samples are then leveraged to train a varied selection of classification models and measure the efficacy of the data augmentation strategy on the overall performance metrics.

2) The authors provide a limited analysis of the quality of the generated synthetic samples. What is the impact of the VAE architecture on these parameters? Although the authors have provided architectural details, I suspect that precise overall reproducibility of the performance metrics may not be possible owing to the stochasticity of the VAE models. Although a nearly matching performance should be achievable with similar steps as described by the authors.

3) On the whole, this paper provides a fairly effective data augmentation strategy to deal with skew in audio datasets. The strategy is intuitive and can be applied to other classes, datasets, and domains in audio analysis. Thus, I recommend an Accept for this paper. However, I highly encourage the authors to include additional analyses of the model architectures and provide detailed explanations for the observed results. For instance, a technical analysis of the problems associated with the conditional VAE (which appears to underperform the other two VAE architectures in this case) could be helpful to apply this research to other datasets.

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Do you want your identity to be public for this peer review? For information about this choice, including consent withdrawal, please see our Privacy Policy.

Reviewer #1: Yes: Adit Krishnan

Formally Accepted
Acceptance Letter - Murugappan M, Editor

PONE-D-21-27133R1

Data Augmentation Using Variational Autoencoders for Improvement of Respiratory Disease Classification

Dear Dr. Patil:

I'm pleased to inform you that your manuscript has been deemed suitable for publication in PLOS ONE. Congratulations! Your manuscript is now with our production department.

If your institution or institutions have a press office, please let them know about your upcoming paper now to help maximize its impact. If they'll be preparing press materials, please inform our press team within the next 48 hours. Your manuscript will remain under strict press embargo until 2 pm Eastern Time on the date of publication. For more information please contact onepress@plos.org.

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Thank you for submitting your work to PLOS ONE and supporting open access.

Kind regards,

PLOS ONE Editorial Office Staff

on behalf of

Dr. Murugappan M

Academic Editor

PLOS ONE

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