Abdullah M Al Alawi, Hoor Al Kaabi, Zubaida Al Falahi, Zakariya Al-Naamani, Said Al Busafi
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Traditional ML and deep learning algorithms were applied to build a 28-day mortality prediction model.</p><p><strong>Results: </strong>The subjects were 173 cirrhosis patients, whose medical records were examined. We developed and evaluated multiple models for 28-day mortality prediction. Among traditional ML algorithms, logistic regression outperformed was achieving an accuracy of 82.9%, precision of 55.6%, recall of 71.4%, and an F1-score of 0.625. Naive Bayes and Random Forest models also performed well, both achieving the same accuracy (82.9%) and precision (54.5%). The deep learning models (multilayer artificial neural network, recurrent neural network, and Long Short-Term Memory) exhibited mixed results, with the multilayer artificial neural network achieving an accuracy of 74.3% but lower precision and recall. The feature importance analysis identified key predictability contributors, including admission in the intensive care unit (importance: 0.112), use of mechanical ventilation (importance: 0.095), and mean arterial pressure (importance: 0.073).</p><p><strong>Conclusions: </strong>Our study demonstrates the potential of ML in predicting 28-day mortality following hospitalization with acute decompensation of liver cirrhosis. Logistic Regression, Naive Bayes, and Random Forest models proved effective, while deep learning models exhibited variable performance. These models can serve as useful tools for risk stratification and timely intervention. Implementing these models in clinical practice has the potential to improve patient outcomes and resource allocation.</p>","PeriodicalId":19667,"journal":{"name":"Oman Medical Journal","volume":"39 3","pages":"e632"},"PeriodicalIF":0.0000,"publicationDate":"2024-05-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11532584/pdf/","citationCount":"0","resultStr":"{\"title\":\"Machine Learning-powered 28-day Mortality Prediction Model for Hospitalized Patients with Acute Decompensation of Liver Cirrhosis.\",\"authors\":\"Abdullah M Al Alawi, Hoor Al Kaabi, Zubaida Al Falahi, Zakariya Al-Naamani, Said Al Busafi\",\"doi\":\"10.5001/omj.2024.79\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objectives: </strong>Chronic liver disease and cirrhosis are persistent global health threats, ranking among the top causes of death. Despite medical advancements, their mortality rates have remained stagnant for decades. Existing scoring systems such as Child-Turcotte-Pugh and Mayo End-Stage Liver Disease have limitations, prompting the exploration of more accurate predictive methods using artificial intelligence and machine learning (ML).</p><p><strong>Methods: </strong>We retrospectively reviewed the data of all adult patients with acute decompensated liver cirrhosis admitted to a tertiary hospital during 2015-2021. The dataset underwent preprocessing to handle missing values and standardize continuous features. Traditional ML and deep learning algorithms were applied to build a 28-day mortality prediction model.</p><p><strong>Results: </strong>The subjects were 173 cirrhosis patients, whose medical records were examined. We developed and evaluated multiple models for 28-day mortality prediction. Among traditional ML algorithms, logistic regression outperformed was achieving an accuracy of 82.9%, precision of 55.6%, recall of 71.4%, and an F1-score of 0.625. Naive Bayes and Random Forest models also performed well, both achieving the same accuracy (82.9%) and precision (54.5%). The deep learning models (multilayer artificial neural network, recurrent neural network, and Long Short-Term Memory) exhibited mixed results, with the multilayer artificial neural network achieving an accuracy of 74.3% but lower precision and recall. The feature importance analysis identified key predictability contributors, including admission in the intensive care unit (importance: 0.112), use of mechanical ventilation (importance: 0.095), and mean arterial pressure (importance: 0.073).</p><p><strong>Conclusions: </strong>Our study demonstrates the potential of ML in predicting 28-day mortality following hospitalization with acute decompensation of liver cirrhosis. Logistic Regression, Naive Bayes, and Random Forest models proved effective, while deep learning models exhibited variable performance. These models can serve as useful tools for risk stratification and timely intervention. 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引用次数: 0
摘要
目标:慢性肝病和肝硬化是对全球健康的长期威胁,位居死亡原因之首。尽管医疗技术在不断进步,但几十年来它们的死亡率却一直停滞不前。现有的评分系统(如 Child-Turcotte-Pugh 和梅奥终末期肝病)存在局限性,这促使人们探索使用人工智能和机器学习(ML)的更准确的预测方法:我们回顾性地查看了一家三级医院在 2015-2021 年间收治的所有急性失代偿期肝硬化成人患者的数据。数据集经过预处理,以处理缺失值并标准化连续特征。应用传统的 ML 和深度学习算法建立了 28 天死亡率预测模型:研究对象是173名肝硬化患者,我们对他们的病历进行了检查。我们开发并评估了多个 28 天死亡率预测模型。在传统的 ML 算法中,逻辑回归的准确率为 82.9%,精确率为 55.6%,召回率为 71.4%,F1 分数为 0.625。Naive Bayes 和随机森林模型也表现出色,都达到了相同的准确率(82.9%)和精确率(54.5%)。深度学习模型(多层人工神经网络、递归神经网络和长短期记忆)的结果好坏参半,多层人工神经网络的准确率为 74.3%,但精确度和召回率较低。特征重要性分析确定了主要的预测因素,包括入住重症监护室(重要性:0.112)、使用机械通气(重要性:0.095)和平均动脉压(重要性:0.073):我们的研究证明了 ML 在预测肝硬化急性失代偿住院后 28 天死亡率方面的潜力。逻辑回归、Naive Bayes 和随机森林模型被证明是有效的,而深度学习模型则表现出不同的性能。这些模型可作为风险分层和及时干预的有用工具。在临床实践中应用这些模型有可能改善患者预后和资源分配。
Machine Learning-powered 28-day Mortality Prediction Model for Hospitalized Patients with Acute Decompensation of Liver Cirrhosis.
Objectives: Chronic liver disease and cirrhosis are persistent global health threats, ranking among the top causes of death. Despite medical advancements, their mortality rates have remained stagnant for decades. Existing scoring systems such as Child-Turcotte-Pugh and Mayo End-Stage Liver Disease have limitations, prompting the exploration of more accurate predictive methods using artificial intelligence and machine learning (ML).
Methods: We retrospectively reviewed the data of all adult patients with acute decompensated liver cirrhosis admitted to a tertiary hospital during 2015-2021. The dataset underwent preprocessing to handle missing values and standardize continuous features. Traditional ML and deep learning algorithms were applied to build a 28-day mortality prediction model.
Results: The subjects were 173 cirrhosis patients, whose medical records were examined. We developed and evaluated multiple models for 28-day mortality prediction. Among traditional ML algorithms, logistic regression outperformed was achieving an accuracy of 82.9%, precision of 55.6%, recall of 71.4%, and an F1-score of 0.625. Naive Bayes and Random Forest models also performed well, both achieving the same accuracy (82.9%) and precision (54.5%). The deep learning models (multilayer artificial neural network, recurrent neural network, and Long Short-Term Memory) exhibited mixed results, with the multilayer artificial neural network achieving an accuracy of 74.3% but lower precision and recall. The feature importance analysis identified key predictability contributors, including admission in the intensive care unit (importance: 0.112), use of mechanical ventilation (importance: 0.095), and mean arterial pressure (importance: 0.073).
Conclusions: Our study demonstrates the potential of ML in predicting 28-day mortality following hospitalization with acute decompensation of liver cirrhosis. Logistic Regression, Naive Bayes, and Random Forest models proved effective, while deep learning models exhibited variable performance. These models can serve as useful tools for risk stratification and timely intervention. Implementing these models in clinical practice has the potential to improve patient outcomes and resource allocation.