An Ensemble Approach to Knowledge-Based Intensity-Modulated Radiation Therapy Planning.

dc.contributor.author

Zhang, Jiahan

dc.contributor.author

Wu, Q Jackie

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Xie, Tianyi

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Sheng, Yang

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Yin, Fang-Fang

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Ge, Yaorong

dc.date.accessioned

2019-10-01T14:18:27Z

dc.date.available

2019-10-01T14:18:27Z

dc.date.issued

2018-01

dc.date.updated

2019-10-01T14:18:25Z

dc.description.abstract

Knowledge-based planning (KBP) utilizes experienced planners' knowledge embedded in prior plans to estimate optimal achievable dose volume histogram (DVH) of new cases. In the regression-based KBP framework, previously planned patients' anatomical features and DVHs are extracted, and prior knowledge is summarized as the regression coefficients that transform features to organ-at-risk DVH predictions. In our study, we find that in different settings, different regression methods work better. To improve the robustness of KBP models, we propose an ensemble method that combines the strengths of various linear regression models, including stepwise, lasso, elastic net, and ridge regression. In the ensemble approach, we first obtain individual model prediction metadata using in-training-set leave-one-out cross validation. A constrained optimization is subsequently performed to decide individual model weights. The metadata is also used to filter out impactful training set outliers. We evaluate our method on a fresh set of retrospectively retrieved anonymized prostate intensity-modulated radiation therapy (IMRT) cases and head and neck IMRT cases. The proposed approach is more robust against small training set size, wrongly labeled cases, and dosimetric inferior plans, compared with other individual models. In summary, we believe the improved robustness makes the proposed method more suitable for clinical settings than individual models.

dc.identifier.issn

2234-943X

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2234-943X

dc.identifier.uri

https://hdl.handle.net/10161/19374

dc.language

eng

dc.publisher

Frontiers Media SA

dc.relation.ispartof

Frontiers in oncology

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10.3389/fonc.2018.00057

dc.subject

dose volume histogram prediction

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ensemble model

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machine learning

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regression model

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statistical modeling

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treatment planning

dc.title

An Ensemble Approach to Knowledge-Based Intensity-Modulated Radiation Therapy Planning.

dc.type

Journal article

duke.contributor.orcid

Sheng, Yang|0000-0003-3380-1966

duke.contributor.orcid

Yin, Fang-Fang|0000-0002-2025-4740|0000-0003-1064-2149

pubs.begin-page

57

pubs.issue

MAR

pubs.organisational-group

School of Medicine

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Duke

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Duke Kunshan University Faculty

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Duke Kunshan University

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Duke Cancer Institute

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Institutes and Centers

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Radiation Oncology

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Clinical Science Departments

pubs.publication-status

Published

pubs.volume

8

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