Effectiveness of Artificial Intelligence Algorithms
1 other identifier
observational
601
1 country
1
Brief Summary
Introduction Throughout human history, surgical interventions have been frequently used in human treatment. However, despite their therapeutic properties, the pain experienced by patients, especially in the acute postoperative period, can be quite challenging for clinicians. Acute postoperative pain is an important public health issue. While 80% of patients report experiencing pain in the postoperative period, 88% of them experience moderate or higher levels of pain. According to another study, more than 60% of surgical patients suffer from moderate to severe acute postoperative pain, and this pain has been associated with the development of chronic postoperative pain. Poorly managed postoperative pain can lead to negative outcomes such as lower patient satisfaction, delayed patient recovery, increased length of hospital stay, increased care costs, chronic pain, unnecessary opioid prescription, opioid abuse, overdose, and death. In addition, in order to provide effective pain management, the method of providing preventive analgesic treatment before the pain begins is frequently used. However, this situation may lead to unnecessary medication administration in many patients and consequently, many adverse events such as bleeding, respiratory depression, cardiac events or gastrointestinal system side effects of opioids, nonsteroidal anti-inflammatory drugs and other analgesics. As a result, the difficulty in predicting acute postoperative pain leads to suboptimal pain management. Therefore, being able to predict which patients will suffer from moderate to severe acute postoperative pain will optimize the risk-benefit ratio of perioperative analgesic treatments and ensure that appropriate treatment is given. Although different studies on this subject have tried to predict postoperative pain with logistic regression analysis, the desired result has not yet been achieved. This situation becomes even more important in surgeries with a high risk of severe pain in the postoperative period, such as lung resection. In order to reduce or prevent postoperative pulmonary complications in patients undergoing lung resection, it is very important for patients to be able to cough without feeling pain and thus to remove secretions from the respiratory tract. If sufficient analgesia is not provided, these patients cannot perform this effectively. This increases complications, hospital stay, and patient care costs. In order to prevent these negative situations and provide optimal analgesia, new methods are needed to predict postoperative pain levels. Numerous models have been proposed in studies to understand the risk factors that will exacerbate severe acute postoperative pain. Most of the research in this area has focused on determining risk factors for postoperative pain using statistical methodology. Previous studies suggest that machine learning models can outperform linear statistical models in classifying postoperative pain-related outcomes when similar features are considered. Therefore, artificial intelligence (AI) algorithms are algorithms that can combine and analyze complex data with hundreds of variables and provide new outputs, and can guide an effective solution in predicting and managing the postoperative process. Previous studies have shown promising results in predicting acute postoperative pain with an area under the curve (AUC) of 0.70 using artificial intelligence algorithms to predict pain with perioperative data. However, studies on this topic are needed in a specific surgery such as lung resection, which has the potential for severe pain. This study aimed to predict postoperative pain by analyzing perioperative data using AI algorithms in lung resections and to determine the effectiveness of AI algorithms in this regard. Thus, it aimed to reduce unnecessary analgesic use in patients, eliminate possible side effects of these drugs, and start effective analgesic treatment in a timely manner in patients with high pain risk. Purpose/Hypothesis: This study aimed to predict postoperative pain by analyzing perioperative data using AI algorithms in lung resections and to determine the effectiveness of AI algorithms in this regard. H0: Artificial intelligence algorithms are not effective in predicting postoperative pain in lung resections. H1: Artificial intelligence algorithms are effective in predicting postoperative pain in lung resections. Material-Method: This study will be conducted in accordance with the Declaration of Helsinki and will be carried out at the SBÜ Ankara Atatürk Sanatorium Training and Research Hospital after receiving ethics committee approval. Our study is a retro-prospective study. Retrospectively collected patient data will be evaluated prospectively with artificial intelligence algorithms.
Trial Health
Trial Health Score
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participants targeted
Target at P75+ for all trials
Started Jan 2025
1 active site
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Trial Relationships
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Study Timeline
Key milestones and dates
First Submitted
Initial submission to the registry
January 8, 2025
CompletedStudy Start
First participant enrolled
January 8, 2025
CompletedFirst Posted
Study publicly available on registry
January 13, 2025
CompletedPrimary Completion
Last participant's last visit for primary outcome
July 15, 2025
CompletedStudy Completion
Last participant's last visit for all outcomes
January 20, 2026
CompletedJanuary 22, 2026
January 1, 2026
6 months
January 8, 2025
January 20, 2026
Conditions
Keywords
Outcome Measures
Primary Outcomes (1)
Numerical Rating Scale (NRS)
NRS is the verbal or written determination of the pain level on a scale between 0 and 10; where 0 represents no pain and 10 represents unbearable pain. NRS 1-3; mild pain, NRS 4-6; moderate pain, NRS 7-10; severe pain will be defined.
24 hour
Study Arms (1)
Lung Resection
patients who underwent lung resection between January 2023 and October 2024
Interventions
Ollama (Ollama., 2024, https://ollama.ai/) artificial intelligence program and "PYTHON 3 Programming Language" and open source libraries will be used for the necessary algorithms for data review and analysis. In case of deficiencies in the data of the patients; the missing data will be edited using "Data Imputation" techniques. Number of files to be reviewed and/or date range to be covered: Patients who underwent lung resection between January 2023 and October 2024 will be included. An estimated 2000 files are planned to be scanned.
Eligibility Criteria
Patients who underwent lung resection surgery between January 2023 and October 2024 and have a complete pain follow-up form will be included in our retro-prospective cross-sectional study.
You may qualify if:
- Age \> 18,
- Patients who underwent lung resection between January 2023 and October 2024 will be included.
You may not qualify if:
- Patients under 18 years of age
- Patients with missing postoperative pain form
- Patients who did not undergo lung resection
Contact the study team to confirm eligibility.
Sponsors & Collaborators
Study Sites (1)
Ankara Atatürk Sanatorium Training and Research Hospital
Ankara, Keçiören, 06290, Turkey (Türkiye)
MeSH Terms
Conditions
Interventions
Condition Hierarchy (Ancestors)
Intervention Hierarchy (Ancestors)
Study Design
- Study Type
- observational
- Observational Model
- OTHER
- Time Perspective
- OTHER
- Sponsor Type
- OTHER GOV
- Responsible Party
- PRINCIPAL INVESTIGATOR
- PI Title
- Specialist
Study Record Dates
First Submitted
January 8, 2025
First Posted
January 13, 2025
Study Start
January 8, 2025
Primary Completion
July 15, 2025
Study Completion
January 20, 2026
Last Updated
January 22, 2026
Record last verified: 2026-01
Data Sharing
- IPD Sharing
- Will not share