An Advanced Machine Learning Model for a Web-Based Artificial Intelligence-Based Clinical Decision Support System Application: Model Development and Validation Study

被引:4
作者
Lin, Tai-Han [1 ]
Chung, Hsing-Yi [1 ]
Jian, Ming-, Jr. [1 ]
Chang, Chih-Kai [1 ]
Perng, Cherng-Lih [1 ]
Liao, Guo-Shiou [2 ]
Yu, Jyh-Cherng [2 ]
Dai, Ming-Shen [3 ]
Yu, Cheng-Ping [4 ]
Shang, Hung-Sheng [1 ]
机构
[1] Natl Def Med Ctr, Triserv Gen Hosp, Dept Pathol, Div Clin Pathol, 161 Sec 6,Minquan E Rd, Taipei 11490, Taiwan
[2] Natl Def Med Ctr, Triserv Gen Hosp, Dept Surg, Div Gen Surg, Taipei, Taiwan
[3] Natl Def Med Ctr, Triserv Gen Hosp, Dept Internal Med, Div Oncol, Taipei, Taiwan
[4] Natl Def Med Ctr, Triserv Gen Hosp, Dept Pathol, Taipei, Taiwan
关键词
breast cancer recurrence; artificial intelligence-based clinical decision support system; machine learning; personalized treatment planning; ChatGPT; predictive model accuracy;
D O I
10.2196/56022
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Breast cancer is a leading global health concern, necessitating advancements in recurrence prediction andmanagement. The development of an artificial intelligence (AI)-based clinical decision support system (AI-CDSS) using ChatGPTaddresses this need with the aim of enhancing both prediction accuracy and user accessibility. Objective: This study aims to develop and validate an advanced machine learning model for a web-based AI-CDSS application,leveraging the question-and-answer guidance capabilities of ChatGPT to enhance data preprocessing and model development,thereby improving the prediction of breast cancer recurrence. Methods: This study focused on developing an advanced machine learning model by leveraging data from the Tri-ServiceGeneral Hospital breast cancer registry of 3577 patients (2004-2016). As a tertiary medical center, it accepts referrals from fourbranches-3 branches in the northern region and 1 branch on an offshore island in our country-that manage chronic diseasesbut refer complex surgical cases, including breast cancer, to the main center, enriching our study population's diversity. Modeltraining used patient data from 2004 to 2012, with subsequent validation using data from 2013 to 2016, ensuring comprehensiveassessment and robustness of our predictive models. ChatGPT is integral to preprocessing and model development, aiding inhormone receptor categorization, age binning, and one-hot encoding. Techniques such as the synthetic minority oversamplingtechnique address the imbalance of data sets. Various algorithms, including light gradient-boosting machine, gradient boosting,and extreme gradient boosting, were used, and their performance was evaluated using metrics such as the area under the curve,accuracy, sensitivity, and F-1-score. Results: The light gradient-boosting machine model demonstrated superior performance, with an area under the curve of 0.80,followed closely by the gradient boosting and extreme gradient boosting models. The web interface of the AI-CDSS tool waseffectively tested in clinical decision-making scenarios, proving its use in personalized treatment planning and patient involvement. Conclusions: The AI-CDSS tool, enhanced by ChatGPT, marks a significant advancement in breast cancer recurrence prediction,offering a more individualized and accessible approach for clinicians and patients. Although promising, further validation indiverse clinical settings is recommended to confirm its efficacy and expand its use
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Artificial Intelligence-based classification of schizophrenia: A high density EEG-support vector machine study
    Tikka, Sai Krishna
    Singh, Bikesh Kumar
    Nizamie, S. Haque
    Garg, Shobit
    Mandal, Sunandan
    Thakur, Kavita
    INDIAN JOURNAL OF PSYCHIATRY, 2020, 62 : S10 - S10
  • [22] Artificial intelligence-based clinical decision support in modern medical physics: Selection, acceptance, commissioning, and quality assurance
    Mahadevaiah, Geetha
    Prasad, R., V
    Bermejo, Inigo
    Jaffray, David
    Dekker, Andre
    Wee, Leonard
    MEDICAL PHYSICS, 2020, 47 (05) : E228 - E235
  • [23] Development and Clinical Evaluation of a Web-Based Upper Limb Home Rehabilitation System Using a Smartwatch and Machine Learning Model for Chronic Stroke Survivors: Prospective Comparative Study
    Chae, Sang Hoon
    Kim, Yushin
    Lee, Kyoung-Soub
    Park, Hyung-Soon
    JMIR MHEALTH AND UHEALTH, 2020, 8 (07):
  • [24] Artificial Intelligence Prediction Model of Occurrence of Cerebral Vasospasms Based on Machine Learning
    Lintas, Konstantinos
    Rohde, Stefan
    Mpoukouvala, Anna
    El Hamalawi, Boris
    Sarge, Robert
    Mueller, Oliver Marcus
    JOURNAL OF NEUROLOGICAL SURGERY PART A-CENTRAL EUROPEAN NEUROSURGERY, 2025, 86 (02) : 196 - 204
  • [25] Artificial intelligence-based identification of butter variations as a model study for detecting food adulteration
    Iymen, Gokce
    Tanriver, Gizem
    Hayirlioglu, Yusuf Ziya
    Ergen, Onur
    INNOVATIVE FOOD SCIENCE & EMERGING TECHNOLOGIES, 2020, 66
  • [26] A machine learning predictive model for recurrence of resected distal cholangiocarcinoma: Development and validation of predictive model using artificial intelligence
    Perez, Marc
    Hansen, Carsten Palnaes
    Burdio, Fernando
    Sanchez-Velazquez, Patricia
    Giuliani, Antonio
    Lancellotti, Francesco
    de Liguori-Carino, Nicola
    Malleo, Giuseppe
    Marchegiani, Giovanni
    Podda, Mauro
    Pisanu, Adolfo
    De Luca, Giuseppe Massimiliano
    Anselmo, Alessandro
    Siragusa, Leandro
    Burgdorf, Stefan Kobbelgaard
    Tschuor, Christoph
    Cacciaguerra, Andrea Benedetti
    Koh, Ye Xin
    Masuda, Yoshio
    Xuan, Mark Yeo Hao
    Seeger, Nico
    Breitenstein, Stefan
    Grochola, Filip Lukasz
    Di Martino, Marcello
    Secanella, Luis
    Busquets, Juli
    Dorcaratto, Dimitri
    Mora-Oliver, Isabel
    Ingallinella, Sara
    Salvia, Roberto
    Abu Hilal, Mohammad
    Aldrighetti, Luca
    Ielpo, Benedetto
    EJSO, 2024, 50 (07):
  • [27] Machine Learning Approach to Reduce Alert Fatigue Using a Disease Medication-Related Clinical Decision Support System: Model Development and Validation
    Poly, Tahmina Nasrin
    Islam, Md Mohaimenul
    Muhtar, Muhammad Solihuddin
    Yang, Hsuan-Chia
    Nguyen, Phung Anh
    Li, Yu-Chuan
    JMIR MEDICAL INFORMATICS, 2020, 8 (11)
  • [28] Machine Learning Predictive Model as Clinical Decision Support System in Orthodontic Treatment Planning
    Prasad, Jahnavi
    Mallikarjunaiah, Dharma R.
    Shetty, Akshai
    Gandedkar, Narayan
    Chikkamuniswamy, Amarnath B.
    Shivashankar, Prashanth C.
    DENTISTRY JOURNAL, 2023, 11 (01)
  • [29] Melanoma Clinical Decision Support System: An Artificial Intelligence-Based Tool to Diagnose and Predict Disease Outcome in Early-Stage Melanoma Patients
    Diaz-Ramon, Jose Luis
    Gardeazabal, Jesus
    Izu, Rosa Maria
    Garrote, Estibaliz
    Rasero, Javier
    Apraiz, Aintzane
    Penas, Cristina
    Seijo, Sandra
    Lopez-Saratxaga, Cristina
    De la Pena, Pedro Maria
    Sanchez-Diaz, Ana
    Cancho-Galan, Goikoane
    Velasco, Veronica
    Sevilla, Arrate
    Fernandez, David
    Cuenca, Iciar
    Cortes, Jesus Maria
    Alonso, Santos
    Asumendi, Aintzane
    Boyano, Maria Dolores
    CANCERS, 2023, 15 (07)
  • [30] Development an Web-Based Application for Predict Broiler Chicken Growth with LSTM model
    Sin, Pui Fang
    Yang, Yu-Chen
    Chen, Yen-Lin
    2024 11TH INTERNATIONAL CONFERENCE ON CONSUMER ELECTRONICS-TAIWAN, ICCE-TAIWAN 2024, 2024, : 497 - 498