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利用常规临床数据应用人工智能进行胃癌的术前诊断和预后评估。

Applying artificial intelligence using routine clinical data for preoperative diagnosis and prognosis evaluation of gastric cancer.

作者信息

Kuwayama Naoki, Hoshino Isamu, Mori Yasukuni, Yokota Hajime, Iwatate Yosuke, Uno Takashi

机构信息

Division of Gastroenterological Surgery, Chiba Cancer Center, Chiba 260-8717, Japan.

Graduate School of Engineering, Faculty of Engineering, Chiba University, Chiba 263-8522, Japan.

出版信息

Oncol Lett. 2023 Oct 4;26(5):499. doi: 10.3892/ol.2023.14087. eCollection 2023 Nov.

Abstract

The present study employed artificial intelligence (AI) machine learning technology to evaluate the prognosis of gastric cancer using blood collection data, commonly used in clinical practice and subsequently performed a stratification distinct from conventional tumor-node-metastasis (TNM) classification. Experiments were conducted using four machine learning methods, namely, logistic regression (LR), random forest (RF), gradient boosting (GB) and deep neural network (DNN), to classify good or poor post-5-year prognosis based on clinicopathological data and post-5-year relapse occurrence. For each machine learning method, the importance was sorted in descending order (from the most to the least); the top features were used for clustering using the k-medoids method. The prediction accuracy and area under the curve (AUC) for 5-year survival were as follows: LR, 76.8% and 0.702; RF, 72.5% and 0.721; GB, 75.3% and 0.73; DNN, 76.9% and 0.682, respectively. The prediction accuracy and AUC for 5-year recurrence-free survival were as follows: LR, 85.5% and 0.692; RF, 79.0% and 0.721; GB, 80.5% and 0.718; DNN, 83.2% and 0.670. Clustering patients into three groups resulted in a stratification distinct from the TNM classification. In conclusion, AI machine learning using routine clinical data can help evaluate the prognosis of gastric cancer, with prognosis differing according to AI-identified clusters.

摘要

本研究采用人工智能(AI)机器学习技术,利用临床实践中常用的采血数据评估胃癌预后,并随后进行了有别于传统肿瘤-淋巴结-转移(TNM)分类的分层。使用四种机器学习方法,即逻辑回归(LR)、随机森林(RF)、梯度提升(GB)和深度神经网络(DNN),根据临床病理数据和5年后复发情况对5年后预后的好坏进行分类。对于每种机器学习方法,重要性按降序排列(从最高到最低);使用k-中心点法将顶级特征用于聚类。5年生存率的预测准确率和曲线下面积(AUC)如下:LR分别为76.8%和0.702;RF分别为72.5%和0.721;GB分别为75.3%和0.73;DNN分别为76.9%和0.682。5年无复发生存率的预测准确率和AUC如下:LR分别为85.5%和0.692;RF分别为79.0%和0.721;GB分别为80.5%和0.718;DNN分别为83.2%和0.670。将患者聚类为三组产生了有别于TNM分类的分层。总之,可以利用常规临床数据的AI机器学习有助于评估胃癌预后,且预后因AI识别的聚类而异。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e38b/10579989/a2b9200fc790/ol-26-05-14087-g00.jpg

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