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Accepted for/Published in: JMIR Cancer

Date Submitted: Jul 14, 2021
Open Peer Review Period: Jul 14, 2021 - Jul 22, 2021
Date Accepted: Oct 4, 2021
(closed for review but you can still tweet)

The final, peer-reviewed published version of this preprint can be found here:

Medical Needs Extraction for Breast Cancer Patients from Question and Answer Services: Natural Language Processing-Based Approach

Kamba M, Manabe M, Wakamiya S, Yada S, Aramaki E, Odani S, Miyashiro I

Medical Needs Extraction for Breast Cancer Patients from Question and Answer Services: Natural Language Processing-Based Approach

JMIR Cancer 2021;7(4):e32005

DOI: 10.2196/32005

PMID: 34709187

PMCID: 8587180

Natural Language Processing based Medical Needs Extraction for Breast Cancer Patients from Question and Answer Services

  • Masaru Kamba; 
  • Masae Manabe; 
  • Shoko Wakamiya; 
  • Shuntaro Yada; 
  • Eiji Aramaki; 
  • Satomi Odani; 
  • Isao Miyashiro

ABSTRACT

Background:

Currently, a large number of patient narratives are available on various web services. On web question and answer (QA) services, patient questions often relate to medical needs. Therefore, we expect these questions to provide clues to understanding patients’ medical needs.

Objective:

This study aims to extract patient needs and classify them into thematic categories. To clarify the patient's needs would be the first step to solve social issues for cancer patients.

Methods:

The material of this study is patient question texts containing the keyword “breast cancer" in the Yahoo! Japan QA service, Yahoo! Chiebukuro, which contains over 60,000 questions on cancer. First, we convert the question text into a vector representation; then, the relevance between patient needs and existing cancer needs categories are calculated based on cosine similarity.

Results:

The proportion of correct classifications in our proposed method is approximately 70%. We reveal the variation and the number of needs from the results of classifying questions.

Conclusions:

There are various clinical applications to applying the proposed method such as identifying the side effect signaling of drugs and the unmet needs of cancer patients. Revealing these needs is important to satisfy the medical needs of cancer patients.


 Citation

Please cite as:

Kamba M, Manabe M, Wakamiya S, Yada S, Aramaki E, Odani S, Miyashiro I

Medical Needs Extraction for Breast Cancer Patients from Question and Answer Services: Natural Language Processing-Based Approach

JMIR Cancer 2021;7(4):e32005

DOI: 10.2196/32005

PMID: 34709187

PMCID: 8587180

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