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Tundra Space

Clinical Research Directory

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2 clinical studies listed.

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Spinal Anesthesia Duration

Tundra lists 2 Spinal Anesthesia Duration clinical trials. Each listing includes eligibility criteria, study locations, and direct links to research sites in the Tundra directory.

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RECRUITING

NCT07078201

Comparative Analysis of Intraoperative Effect Dexmedetomidine and Fentanyl as an Adjuvant to Heavy Bupivacaine in Spinal Anaesthesia in Lower Limb Orthopedic Surgeries to Evaluate the Hemodynamic Stability and Onset and Duration of Motor Block of Using Intrathecal Dexmedetomidine and Fentanyl

Spinal anesthesia is the most widely employed procedure for lower limb orthopedic operations, as it is very cost-effective and simple to apply. These advantages could be restricted because presently existing local anesthetic drugs had relatively short length of action. (1) Spinal anesthesia with 0.5% heavy bupivacaine (hyperbaric) is a common technique, still there was burden of its short duration of action. To overcome this issue, there was a continuous search for an ideal adjuvant.(2) Adjuvants were mostly added to local anesthetic drugs to increase their effectiveness, speedy onset, increase the period of the block, and reduce the local anesthetics dosage, thus reduction their adverse effects.(3) Such adjuvants had been beneficial in extension of analgesia along with initiation of movement though their related side effects.(4)

Gender: All

Ages: 20 Years - 60 Years

Updated: 2025-12-30

Spinal Anesthesia Duration
RECRUITING

NCT07256548

Machine Learning for Predicting Spinal Anesthesia Duration

Spinal anesthesia provides significant advantages over general anesthesia in knee arthroplasty, including reduced blood loss, faster recovery, and fewer complications. However, predicting its duration is critical for patient safety and effective postoperative management. This study evaluates the usability of machine learning (ML) algorithms to predict the termination time of spinal anesthesia and the patient's readiness for mobilization. Using demographic, surgical, and anesthetic variables, ML models were trained to estimate anesthesia duration. Accurate predictions may improve intraoperative planning, optimize postoperative care, and enhance patient outcomes. Integrating ML-based predictive systems into anesthesia practice can contribute to safer, more efficient, and personalized perioperative management.

Gender: All

Ages: 18 Years - Any

Updated: 2025-12-08

1 state

Spinal Anesthesia
Machine Learning
Knee Arthroplasty, Total
+3