早期乳腺癌的中医舌诊指标

L. Lo, T. Cheng, Yi-Jing Chen, S. Natsagdorj, J. Chiang
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The purpose focuses on inducing significant tongue features (p<;0.05) to discriminate early-stage breast cancer patients from normal persons. The Mann-Whitney test shows that the amount of tongue fur (p = 0.024), maximum covering area of tongue fur (p = 0.009), thin tongue fur (p = 0.009), the average area of red dot (p = 0.049), the maximum area of red dot (p = 0.009), red dot in the spleen stomach area (p = 0.000), and red dot in the heart-lung area (p = 0.000) demonstrate significant differences. Next, the data collected are further classified into two groups. The training group consists of 57 early-stage breast cancer patients and 60 normal persons, while the testing group is composed of 10 early stage breast cancer patients and 10 normal persons. The logistic regression by utilizing these 7 tongue features with significant differences in Mann-Whitney test as factors is performed. 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引用次数: 4

摘要

本文通过对舌部特征的鉴别,通过非侵入性方法对早期BC患者与正常人进行鉴别,以期早期发现BC,及时治疗,提高治愈率,降低复发率。采用舌部自动诊断系统(Automatic tongue Diagnosis System, ATDS)对67例0期和1期乳腺癌患者和70例正常人进行舌部特征提取[4- 6,28 -31]。每条舌头共有舌色、舌质、舌裂、舌毛、红点、瘀斑、牙痕、唾液、舌形9个特征。提取的特征根据所处区域进一步细分,分别为脾胃区、肝胆左区、肝胆右区、肾区、心肺区。目的是诱导显著舌特征(p0.05),并进行两次逻辑回归。首先,我们去掉了红点的最大面积(p = 0.266),并进行了逻辑回归。其中舌毛量(p = 0.000)、舌毛最大覆盖面积(p = 0.000)、舌毛薄(p = 0.008)、红点平均面积(p = 0.056)、脾胃区红点(p = 0.005)、心肺区红点(p = 0.011)均有独立显著意义。在第二轮中,去除红点的平均面积(p = 0.056)。经logistic回归分析,舌毛数量(p = 0.001)、舌毛最大覆盖面积(p = 0.000)、舌毛薄(p = 0.007)、脾胃区红点(p = 0.006)、心肺区红点(p = 0.003)具有独立显著意义。上述三种模型均采用试验组的舌部特征来检验识别出的显著舌部特征对早期乳腺癌的预测能力。使用Mann-Whitney test获得的7、6、5个显著舌状特征对正常人的准确率分别达到80%、80%、90%,对相应的早期乳腺癌患者的准确率分别达到60%、60%、50%。
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Traditional Chinese Medicine Tongue Diagnosis Index of Early-Stage Breast Cancer
This paper investigates discriminating tongue features to distinguish between early stage BC patients and normal persons via non-invaded methods, expecting to detect BC in the early stage and give treatment in time to increase the recovery rate and lower relapse rate. The tongue features for 67 breast cancer patients of 0 and 1 stages, and 70 normal persons are extracted by the Automatic Tongue Diagnosis System (ATDS) [4-6, 28-31]. A total of nine tongue features, namely, tongue color, tongue quality, tongue fissure, tongue fur, red dot, ecchymosis, tooth mark, saliva, and tongue shape are identified for each tongue. Features extracted are further sub-divided according to the areas located, i.e., spleen-stomach, liver-gall-left, liver-gall right, kidney, and heart-lung area. The purpose focuses on inducing significant tongue features (p<;0.05) to discriminate early-stage breast cancer patients from normal persons. The Mann-Whitney test shows that the amount of tongue fur (p = 0.024), maximum covering area of tongue fur (p = 0.009), thin tongue fur (p = 0.009), the average area of red dot (p = 0.049), the maximum area of red dot (p = 0.009), red dot in the spleen stomach area (p = 0.000), and red dot in the heart-lung area (p = 0.000) demonstrate significant differences. Next, the data collected are further classified into two groups. The training group consists of 57 early-stage breast cancer patients and 60 normal persons, while the testing group is composed of 10 early stage breast cancer patients and 10 normal persons. The logistic regression by utilizing these 7 tongue features with significant differences in Mann-Whitney test as factors is performed. In order to reduce the number of tongue features employed in prediction, we remove one of the 7 tongue features with lesser significant difference (p>0.05) and perform logistic regression twice. In the first time, we remove the maximum area of red dot (p = 0.266), and perform logistic regression. Among them, the amount of tongue fur (p = 0.000), the maximum covering area of tongue fur (p = 0.000), thin tongue fur (p = 0.008), the average area of red dot (p = 0.056), red dot in the spleen-stomach area (p = 0.005), red dot in the heart-lung area (p = 0.011) reveal independently significant meaning. In the second round, the average area of red dot (p = 0.056) is removed. The logistic regression shows that the amount of tongue fur (p = 0.001), the maximum covering area of tongue fur (p = 0.000), thin tongue fur (p = 0.007), red dot in the spleen-stomach area (p = 0.006), red dot in the heart-lung area (p = 0.003) reveal independently significant meaning. The tongue features of the testing group are employed in the aforementioned three models to test the power of significant tongue features identified in predicting early-stage breast cancer. An accuracy of 80%, 80% and 90% is reached on normal peoples by applying the 7, 6 and 5 significant tongue features obtained through Mann-Whitney test, respectively, while 60%, 60% and 50% is reached on the corresponding early-stage breast cancer patients.
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