利用机器学习预测婴儿颅骨骨折的跌倒参数。

IF 3 3区 医学 Q2 BIOPHYSICS
Jacob N Hirst, Brian R Phung, Bjorn T Johnsson, Junyan He, Brittany Coats, Ashley D Spear
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引用次数: 0

摘要

当婴儿因颅骨骨折入院时,提供者必须区分意外和虐待性头部创伤的病例。在这种情况下,有关事件的信息有限,证人的陈述并不总是可靠的。在这项研究中,我们引入了一种新颖的数据驱动方法来预测导致婴儿颅骨骨折的跌倒参数,以帮助确定虐待性头部创伤。我们利用最先进的有限元骨折模拟框架,从模拟跌倒中生成独特的颅骨骨折模式数据集。然后,我们从数据集中得到的裂缝模式中提取特征,作为机器学习模型的输入。我们比较了七种机器学习模型预测两个坠落参数的能力:撞击地点和坠落高度。我们的最佳模型结果表明,虽然预测准确的坠落高度仍然具有挑战性(山脊回归模型的r2为0.27),但我们可以有效地识别潜在的影响地点(随机森林回归模型的r2在0.65到0.76之间)。这项工作不仅提供了一种工具,以提高评估儿童头部创伤病例的滥用能力,而且还倡导在模拟复杂颅骨骨折的计算模型方面取得进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting fall parameters from infant skull fractures using machine learning.

When infants are admitted to the hospital with skull fractures, providers must distinguish between cases of accidental and abusive head trauma. Limited information about the incident is available in such cases, and witness statements are not always reliable. In this study, we introduce a novel, data-driven approach to predict fall parameters that lead to skull fractures in infants in order to aid in determinations of abusive head trauma. We utilize a state-of-the-art finite element fracture simulation framework to generate a unique dataset of skull fracture patterns from simulated falls. We then extract features from the resulting fracture patterns in this dataset to be used as input into machine learning models. We compare seven machine learning models on their abilities to predict two fall parameters: impact site and fall height. The results from our best-performing models demonstrate that while predicting the exact fall height remains challenging ( R 2 0.27 for the ridge regression model), we can effectively identify potential impact sites ( R 2 between 0.65 and 0.76 for the random forest regression model). This work not only provides a tool to enhance the ability to assess abuse in cases of pediatric head trauma, but also advocates for advancements in computational models to simulate complex skull fractures.

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来源期刊
Biomechanics and Modeling in Mechanobiology
Biomechanics and Modeling in Mechanobiology 工程技术-工程:生物医学
CiteScore
7.10
自引率
8.60%
发文量
119
审稿时长
6 months
期刊介绍: Mechanics regulates biological processes at the molecular, cellular, tissue, organ, and organism levels. A goal of this journal is to promote basic and applied research that integrates the expanding knowledge-bases in the allied fields of biomechanics and mechanobiology. Approaches may be experimental, theoretical, or computational; they may address phenomena at the nano, micro, or macrolevels. Of particular interest are investigations that (1) quantify the mechanical environment in which cells and matrix function in health, disease, or injury, (2) identify and quantify mechanosensitive responses and their mechanisms, (3) detail inter-relations between mechanics and biological processes such as growth, remodeling, adaptation, and repair, and (4) report discoveries that advance therapeutic and diagnostic procedures. Especially encouraged are analytical and computational models based on solid mechanics, fluid mechanics, or thermomechanics, and their interactions; also encouraged are reports of new experimental methods that expand measurement capabilities and new mathematical methods that facilitate analysis.
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