Artificial intelligence (AI) is transforming cancer diagnosis and treatment. The intricate nature of this disease necessitates the collaboration of diverse stakeholders with varied expertise to ensure the effectiveness of cancer research. Despite its importance, forming effective interdisciplinary research teams remains challenging. Understanding and predicting collaboration patterns can help researchers, organizations, and policymakers optimize resources and foster impactful research. We examined co-authorship networks as a proxy for collaboration within AI-driven cancer research. Using 7,738 publications (2000-2017) from Scopus, we constructed 36 overlapping co-authorship networks representing new, persistent, and discontinued collaborations. We engineered both attribute-based and structure-based features and built four machine learning classifiers. Model interpretability was performed using Shapley Additive Explanations (SHAP). Random forest achieved the highest recall for all three types of examined collaborations. The discipline similarity score emerged as a crucial factor, positively affecting new and persistent patterns while negatively impacting discontinued collaborations. Additionally, high productivity and seniority were positively associated with discontinued links. Our findings can guide the formation of effective research teams, enhance interdisciplinary cooperation, and inform strategic policy decisions.
翻译:人工智能(AI)正在变革癌症的诊断与治疗。鉴于该疾病的复杂性,需要具备不同专业背景的多元利益相关者协同合作,以确保癌症研究的有效性。尽管这种合作至关重要,但组建高效的跨学科研究团队仍面临挑战。理解并预测合作模式有助于研究人员、机构及政策制定者优化资源配置并推动具有影响力的研究。本研究以合著网络作为AI驱动癌症研究领域合作的代理指标进行分析。基于Scopus数据库中2000年至2017年间的7,738篇出版物,我们构建了36个重叠的合著网络,分别表征新型、持续型及中断型合作关系。通过构建基于属性与基于结构的特征,我们建立了四种机器学习分类器,并采用沙普利加性解释(SHAP)方法实现模型可解释性。随机森林模型在三类合作关系的预测中均取得最高召回率。学科相似性得分是关键影响因素:对新型及持续型合作呈正向作用,而对中断型合作呈负向影响。此外,高产率与资深资历与中断型合作关系呈正相关。本研究结论可为组建高效科研团队、加强跨学科合作及制定战略性政策提供指导。