用于空间数据的梯度提升树及其在医学成像数据中的应用。

IF 1.5 Q3 HEALTH CARE SCIENCES & SERVICES
Reza Iranzad, Xiao Liu, W Art Chaovalitwongse, Daniel Hippe, Shouyi Wang, Jie Han, Phawis Thammasorn, Chunyan Duan, Jing Zeng, Stephen Bowen
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引用次数: 5

摘要

Boosting Trees是最成功的统计学习方法之一,它包括顺序地生长一组简单的回归树(“弱学习者”)。本文提出了一种具有协变信息的空间数据梯度Boost-S算法。Boost-S将空间相关性集成到极限梯度Boosting的经典框架中。每棵树都是通过求解正则化优化问题来构建的,其中目标函数考虑了潜在的空间相关性,并涉及到树复杂性的两个惩罚项。提出了一种计算高效的贪婪启发式算法来获得树的集合。所提出的Boost-S应用于从癌症放化疗临床试验中收集的空间相关FDG-PET(氟脱氧葡萄糖-正电子发射断层扫描)成像数据。我们的数值研究成功地证明了所提出的Boost-S相对于现有方法在这一特定应用中的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Gradient Boosted Trees for Spatial Data and Its Application to Medical Imaging Data.

Gradient Boosted Trees for Spatial Data and Its Application to Medical Imaging Data.

Boosting Trees are one of the most successful statistical learning approaches that involve sequentially growing an ensemble of simple regression trees ("weak learners"). This paper proposes a gradient Boosted Trees algorithm for Spatial Data (Boost-S) with covariate information. Boost-S integrates the spatial correlation into the classical framework of eXtreme Gradient Boosting. Each tree is constructed by solving a regularized optimization problem, where the objective function takes into account the underlying spatial correlation and involves two penalty terms on tree complexity. A computationally-efficient greedy heuristic algorithm is proposed to obtain an ensemble of trees. The proposed Boost-S is applied to the spatially-correlated FDG-PET (fluorodeoxyglucose-positron emission tomography) imaging data collected from clinical trials of cancer chemoradiotherapy. Our numerical investigations successfully demonstrate the advantages of the proposed Boost-S over existing approaches for this particular application.

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来源期刊
IISE Transactions on Healthcare Systems Engineering
IISE Transactions on Healthcare Systems Engineering Social Sciences-Safety Research
CiteScore
3.10
自引率
0.00%
发文量
19
期刊介绍: IISE Transactions on Healthcare Systems Engineering aims to foster the healthcare systems community by publishing high quality papers that have a strong methodological focus and direct applicability to healthcare systems. Published quarterly, the journal supports research that explores: · Healthcare Operations Management · Medical Decision Making · Socio-Technical Systems Analysis related to healthcare · Quality Engineering · Healthcare Informatics · Healthcare Policy We are looking forward to accepting submissions that document the development and use of industrial and systems engineering tools and techniques including: · Healthcare operations research · Healthcare statistics · Healthcare information systems · Healthcare work measurement · Human factors/ergonomics applied to healthcare systems Research that explores the integration of these tools and techniques with those from other engineering and medical disciplines are also featured. We encourage the submission of clinical notes, or practice notes, to show the impact of contributions that will be published. We also encourage authors to collect an impact statement from their clinical partners to show the impact of research in the clinical practices.
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