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Machine learning for the diagnosis of lung disease / William Lindsay.

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Dissertations & Theses @ University of Pennsylvania Available online

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Format:
Book
Thesis/Dissertation
Author/Creator:
Lindsay, William, author.
Contributor:
Gee, James C., 1964- degree supervisor.
Maidment, Andrew, degree supervisor.
University of Pennsylvania. Department of Bioengineering, degree granting institution.
Language:
English
Subjects (All):
Computer science.
Medical imaging.
Oncology.
Bioengineering--Penn dissertations.
Penn dissertations--Bioengineering.
Local Subjects:
Computer science.
Medical imaging.
Oncology.
Bioengineering--Penn dissertations.
Penn dissertations--Bioengineering.
Genre:
Academic theses.
Physical Description:
1 online resource (169 pages)
Contained In:
Dissertations Abstracts International 82-07B.
Place of Publication:
[Philadelphia, Pennsylvania] : University of Pennsylvania ; Ann Arbor : ProQuest Dissertations & Theses, 2020.
Language Note:
English
System Details:
Mode of access: World Wide Web.
text file
Summary:
Lung cancer and interstitial lung disease (ILD) are two diseases of the lung with high impact on society. However, despite widespread interest from the scientific, medical, and patient communities, machine learning methods to improve diagnosis of these diseases remain underutilized in the clinical setting. In the face of numerous barriers to adoption, solutions which leverage the right datasets and the right methods to answer relevant clinical questions are needed. Our laboratory engages in clinical collaborations to create such datasets and applies interpretable machine learning methods to train diagnosis models to answer specific clinical questions. In this thesis, we present a machine learning based diagnosis classifier for suspicious thoracic lesions, capable of differentiating between primary and secondary cancer, that is trained on a built-for-purpose pathology confirmed lung nodule dataset. We also present a diagnosis classifier for ILD capable of creating a differential diagnosis list from human extracted image features with higher accuracy than radiologists alone. Together, our work represents an important step towards translating machine learning analyses from the research setting into the clinical domain, though additional validation with multi-institutional datasets will be required before widespread adoption.
Notes:
Source: Dissertations Abstracts International, Volume: 82-07, Section: B.
Advisors: Gee, James C.; Maidment, Andrew; Committee members: Wallace Miller; Jianbo Shi.
Department: Bioengineering.
Ph.D. University of Pennsylvania 2020.
Local Notes:
School code: 0175
ISBN:
9798557062671
Access Restriction:
Restricted for use by site license.
This item is not available from ProQuest Dissertations & Theses.
This item must not be sold to any third party vendors.

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