Tagi Masato, Tajiri Mari, Hamada Yasuhiro, Wakata Yoshifumi, Shan Xiao, Ozaki Kazumi, Kubota Masanori, Amano Sosuke, Sakaue Hiroshi, Suzuki Yoshiko, Hirose Jun
Department of Medical Informatics, Institute of Biomedical Sciences, Tokushima University Graduate School, Tokushima, Japan.
Division of Nutrition, Tokushima University Hospital, Tokushima, Japan.
JMIR Form Res. 2022 May 10;6(5):e35991. doi: 10.2196/35991.
An accurate evaluation of the nutritional status of malnourished hospitalized patients at a higher risk of complications, such as frailty or disability, is crucial. Visual methods of estimating food intake are popular for evaluating the nutritional status in clinical environments. However, from the perspective of accurate measurement, such methods are unreliable.
The accuracy of estimating leftover liquid food in hospitals using an artificial intelligence (AI)-based model was compared to that of visual estimation.
The accuracy of the AI-based model (AI estimation) was compared to that of the visual estimation method for thin rice gruel as staple food and fermented milk and peach juice as side dishes. A total of 576 images of liquid food (432 images of thin rice gruel, 72 of fermented milk, and 72 of peach juice) were used. The mean absolute error, root mean squared error, and coefficient of determination (R) were used as metrics for determining the accuracy of the evaluation process. Welch t test and the confusion matrix were used to examine the difference of mean absolute error between AI and visual estimation.
The mean absolute errors obtained through the AI estimation approach were 0.63 for fermented milk, 0.25 for peach juice, and 0.85 for the total. These were significantly smaller than those obtained using the visual estimation approach, which were 1.40 (P<.001) for fermented milk, 0.90 (P<.001) for peach juice, and 1.03 (P=.009) for the total. By contrast, the mean absolute error for thin rice gruel obtained using the AI estimation method (0.99) did not differ significantly from that obtained using visual estimation (0.99). The confusion matrix for thin rice gruel showed variation in the distribution of errors, indicating that the errors in the AI estimation were biased toward the case of many leftovers. The mean squared error for all liquid foods tended to be smaller for the AI estimation than for the visual estimation. Additionally, the coefficient of determination (R) for fermented milk and peach juice tended to be larger for the AI estimation than for the visual estimation, and the R value for the total was equal in terms of accuracy between the AI and visual estimations.
The AI estimation approach achieved a smaller mean absolute error and root mean squared error and a larger coefficient of determination (R) than the visual estimation approach for the side dishes. Additionally, the AI estimation approach achieved a smaller mean absolute error and root mean squared error compared to the visual estimation method, and the coefficient of determination (R) was similar to that of the visual estimation method for the total. AI estimation measures liquid food intake in hospitals more precisely than visual estimation, but its accuracy in estimating staple food leftovers requires improvement.
准确评估营养不良的住院患者的营养状况至关重要,这类患者出现并发症(如虚弱或残疾)的风险较高。在临床环境中,通过视觉方法估计食物摄入量是评估营养状况的常用方式。然而,从精确测量的角度来看,这些方法并不可靠。
比较基于人工智能(AI)模型估计医院剩余流质食物的准确性与视觉估计的准确性。
将基于AI的模型(AI估计)的准确性与以稀粥为主食、发酵乳和桃汁为配菜的视觉估计方法的准确性进行比较。共使用了576张流质食物图像(432张稀粥图像、72张发酵乳图像和72张桃汁图像)。平均绝对误差、均方根误差和决定系数(R)用作确定评估过程准确性的指标。采用韦尔奇t检验和混淆矩阵来检验AI估计与视觉估计之间平均绝对误差的差异。
通过AI估计方法获得的发酵乳平均绝对误差为0.63,桃汁为0.25,总计为0.85。这些均显著小于通过视觉估计方法获得的结果,发酵乳为1.40(P<0.001),桃汁为0.90(P<0.001),总计为1.03(P=0.009)。相比之下,使用AI估计方法获得的稀粥平均绝对误差(0.99)与视觉估计获得的结果(0.99)无显著差异。稀粥的混淆矩阵显示误差分布存在差异,表明AI估计中的误差偏向于剩余较多食物的情况。对于所有流质食物,AI估计的均方误差往往小于视觉估计。此外,发酵乳和桃汁的AI估计决定系数(R)往往大于视觉估计,并且总计的R值在AI和视觉估计的准确性方面相当。
对于配菜,AI估计方法比视觉估计方法实现了更小的平均绝对误差和均方根误差以及更大的决定系数(R)。此外,与视觉估计方法相比,AI估计方法实现了更小的平均绝对误差和均方根误差,并且总计决定系数(R)与视觉估计方法相似。AI估计比视觉估计更精确地测量医院中的流质食物摄入量,但其估计主食剩余量的准确性有待提高。