Reasoning and causal inference regarding surgical options for patients with low‐grade gliomas using machine learning: A SEER‐based study

Author:

Zhu Enzhao1,Shi Weizhong2,Chen Zhihao3,Wang Jiayi1,Ai Pu1,Wang Xiao1,Zhu Min4,Xu Ziqin5,Xu Lingxiao1,Sun Xueyi6,Liu Jingyu6,Xu Xuetong7,Shan Dan8ORCID

Affiliation:

1. School of Medicine Tongji University Shanghai China

2. Shanghai Hospital Development Center Shanghai China

3. School of Business East China University of Science and Technology Shanghai China

4. Department of Computer Science and Technology, School of Electronics and Information Engineering Tongji University Shanghai China

5. Department of Industrial Engineering and Operations Research Columbia University New York New York USA

6. School of Ocean and Earth Science Tongji University Shanghai China

7. College of Civil Engineering Tongji University Shanghai China

8. Regenerative Medicine Institute, School of Medicine National University of Ireland Galway Ireland

Abstract

AbstractBackgroundDue to the heterogeneity of low‐grade gliomas (LGGs), the lack of randomized control trials, and strong clinical evidence, the effect of the extent of resection (EOR) is currently controversial.AimTo determine the best choice between subtotal resection (STR) and gross‐total resection (GTR) for individual patients and to identify features that are potentially relevant to treatment heterogeneity.MethodsPatients were enrolled from the SEER database. We used a novel DL approach to make treatment recommendations for patients with LGG. We also made causal inference of the average treatment effect (ATE) of GTR compared with STR.ResultsThe patients were divided into the Consis. and In‐consis. groups based on whether their actual treatment and model recommendations were consistent. Better brain cancer‐specific survival (BCSS) outcomes in the Consis. group was observed. Overall, we also identified two subgroups that showed strong heterogeneity in response to GTR. By interpreting the models, we identified numerous variables that may be related to treatment heterogeneity.ConclusionsThis is the first study to infer the individual treatment effect, make treatment recommendation, and guide surgical options through deep learning approach in LGG research. Through causal inference, we found that heterogeneous responses to STR and GTR exist in patients with LGG. Visualization of the model yielded several factors that contribute to treatment heterogeneity, which are worthy of further discussion.

Publisher

Wiley

Subject

Cancer Research,Radiology, Nuclear Medicine and imaging,Oncology

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