Beauvais Bradley, Ramamonjiarivelo Zo, Betancourt Jose, Cruz John, Fulton Lawrence
School of Health Administration, Texas State University, Encino Hall, Room 250A, 601 University Drive, San Marcos, TX 78666, USA.
Boston College, Woods College of Advancing Studies, St. Mary's Hall South, Chestnut Hill, MA 02467, USA.
Healthcare (Basel). 2023 Jan 5;11(2):165. doi: 10.3390/healthcare11020165.
The United States healthcare industry has witnessed a number of hospitals declare bankruptcy. This has a meaningful impact on local communities with vast implications on access, cost, and quality of care available. In our research, we seek to determine what contemporary structural and operational factors influence a bankruptcy outcome, and craft predictive models to guide healthcare leaders on how to best avoid bankruptcy in the future. In this exploratory study we performed, a single-year cross-sectional analysis of short-term acute care hospitals in the United States and subsequently developed three predictive models: logistic regression, a linear support vector machine (SVM) model with hinge function, and a perceptron neural network. Data sources include Definitive Healthcare and Becker's Hospital Review 2019 report with 3121 observations of 32 variables with 27 observed bankruptcies. The three models consistently indicate that 18 variables have a significant impact on predicting hospital bankruptcy. Currently, there is limited literature concerning financial forecasting models and knowledge detailing the factors associated with hospital bankruptcy. By having tailored knowledge of predictive factors to establish a sound financial structure, healthcare institutions at large can be empowered to take proactive steps to avoid financial distress at the organizational level and ensure long-term financial viability.
美国医疗行业已有多家医院宣布破产。这对当地社区产生了重大影响,在医疗服务的可及性、成本和质量方面引发了诸多问题。在我们的研究中,我们试图确定哪些当代结构和运营因素会影响破产结果,并构建预测模型,以指导医疗行业领导者如何在未来最好地避免破产。在我们进行的这项探索性研究中,对美国短期急性病医院进行了单年度横断面分析,随后开发了三种预测模型:逻辑回归、具有铰链函数的线性支持向量机(SVM)模型和感知器神经网络。数据来源包括Definitive Healthcare和《贝克尔医院评论》2019年报告,有3121条关于32个变量的观测数据,其中27家医院破产。这三种模型一致表明,有18个变量对预测医院破产有重大影响。目前,关于财务预测模型以及详细说明与医院破产相关因素的知识的文献有限。通过掌握预测因素的定制知识来建立健全的财务结构,广大医疗机构能够有能力采取积极措施,在组织层面避免财务困境,并确保长期财务可行性。