Investigation of a chest radiograph-based deep learning model to identify an imaging biomarker for malnutrition in older adults

Ryo Sasaki , Yasuhiko Nakao , Fumihiro Mawatari , Takahito Nishihara , Masafumi Haraguchi , Masanori Fukushima , Ryu Sasaki , Satoshi Miuma , Hisamitsu Miyaaki , Kazuhiko Nakao
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Abstract

Background & Aims

In recent years, artificial intelligence (AI) models based on chest radiography have gained attention in various fields, including cardiac function, age estimation, and clinical assessment during hospitalization. The Global Leadership Initiative on Malnutrition (GLIM) criteria are widely used in malnutrition diagnosis. The objective of this study is to examine the predictive ability of chest radiographs using deep learning techniques in relation to hematological parameters that are already known to be associated with malnutrition, as well as malnutrition scores, including GLIM criteria.

Methods

A total of 3701 older patients (age ≥65 years) were admitted to our hospital from January 2021 to January 2022, and after excluding those with missing data, participants (N=2862) were enrolled. Chest Radiographs, Basic information (height, weight, age, and sex), hematological parameters (albumin, hemoglobin, lymphocyte count, and C-reactive protein), malnutritional assessments: GLIM severity, Geriatric Nutritional Risk Index (GNRI), modified Controlling Nutritional status (mCONUT), and Subjective Global Assessment (SGA), and Nutritional Support Team (NST) intervention were extracted and utilized as training and validation data. We used chest radiographic image's matrix as explanatory variables for numerical (hematological parameters) or categorical (scoring) nutritional data as objective variables. A previously reported deep learning model helped construct a chest radiography-based prediction model from the training data. The predicted data were evaluated by computing the correlation coefficients and area under the curve (AUC).

Results

As a numerical variables analysis, albumin and hemoglobin predictions were relatively accurate (R=0.71, 0.74). As a categorical malnutritional prediction, chest radiograph-based AI effectively aided nutritional decisions based on GNRI (AUC: 0.88, 0.83, 0.88, and 0.90), SGA (0.75, 0.71, and 0.88), mCONUT (0.84, 0.88, 0.90, and 0.88), and GLIM severity (0.88, 0.82, and 0.85) class indices. The Class activation maps (CAM) analysis identified variation in the X-ray sites for each malnutritional AI prediction, with some sites in agreement and others in disagreement.

Conclusion

Deep learning-based chest radiographic AI has the potential to more accurately reflect malnutrition scoring than hematologic parameters. Furthermore, it can predict outcomes and assess malnutrition, including GLIM criteria. It is anticipated that AI will be integrated into the NST workflow in the future.
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研究基于胸片的深度学习模型,以确定老年人营养不良的影像生物标志物
背景& 目的近年来,基于胸片的人工智能(AI)模型在多个领域受到关注,包括心脏功能、年龄估计和住院期间的临床评估。全球营养不良领导倡议(GLIM)标准被广泛用于营养不良诊断。本研究的目的是利用深度学习技术,结合已知与营养不良相关的血液学参数以及包括 GLIM 标准在内的营养不良评分,研究胸片的预测能力。方法2021 年 1 月至 2022 年 1 月,本院共收治 3701 名老年患者(年龄≥65 岁),在排除数据缺失者后,共纳入参与者(N=2862)。胸片、基本信息(身高、体重、年龄和性别)、血液学参数(白蛋白、血红蛋白、淋巴细胞计数和 C 反应蛋白)、营养不良评估:我们提取了 GLIM 严重程度、老年营养风险指数 (GNRI)、改良控制营养状况 (mCONUT) 和主观全面评估 (SGA) 以及营养支持小组 (NST) 的干预情况,并将其用作训练和验证数据。我们将胸片图像矩阵作为解释变量,将数值(血液学参数)或分类(评分)营养数据作为客观变量。之前报道的深度学习模型帮助我们从训练数据中构建了一个基于胸片的预测模型。结果 作为数值变量分析,白蛋白和血红蛋白预测相对准确(R=0.71、0.74)。作为分类营养不良预测,基于胸片的人工智能可有效帮助根据 GNRI(AUC:0.88、0.83、0.88 和 0.90)、SGA(0.75、0.71 和 0.88)、mCONUT(0.84、0.88、0.90 和 0.88)和 GLIM 严重程度(0.88、0.82 和 0.85)等级指数做出营养决策。基于深度学习的胸部放射学人工智能有可能比血液学参数更准确地反映营养不良评分。此外,它还能预测结果和评估营养不良,包括 GLIM 标准。预计未来人工智能将被整合到 NST 工作流程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Clinical Nutrition Open Science
Clinical Nutrition Open Science Nursing-Nutrition and Dietetics
CiteScore
2.20
自引率
0.00%
发文量
55
审稿时长
18 weeks
期刊最新文献
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