A Prediction Model for Primary Anterior Cruciate Ligament Injury Using Artificial Intelligence.

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Date

2021-09-21

Authors

Tamimi, Iskandar
Ballesteros, Joaquin
Perez-Lara, Almudena
Tat, Jimmy
Alaqueel, Motaz
Schupbach, Justin
Marwan, Yousef
Urdiales, Cristina
Gomez-de-Gabriel, Jesus Manuel
Burman, Mark

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Sage Publications
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Abstract

Supervised machine learning models in artificial intelligence (AI) have been increasingly used to predict different types of events. However, their use in orthopaedic surgery has been limited. It was hypothesized that supervised learning techniques could be used to build a mathematical model to predict primary anterior cruciate ligament (ACL) injuries using a set of morphological features of the knee. Cross-sectional study; Level of evidence, 3. Included were 50 adults who had undergone primary ACL reconstruction between 2008 and 2015. All patients were between 18 and 40 years of age at the time of surgery. Patients with a previous ACL injury, multiligament knee injury, previous ACL reconstruction, history of ACL revision surgery, complete meniscectomy, infection, missing data, and associated fracture were excluded. We also identified 50 sex-matched controls who had not sustained an ACL injury. For all participants, we used the preoperative magnetic resonance images to measure the anteroposterior lengths of the medial and lateral tibial plateaus as well as the lateral and medial bone slope (LBS and MBS), lateral and medial meniscal height (LMH and MMH), and lateral and medial meniscal slope (LMS and MMS). The AI predictor was created using Matlab R2019b. A Gaussian naïve Bayes model was selected to create the predictor. Patients in the ACL injury group had a significantly increased posterior LBS (7.0° ± 4.7° vs 3.9° ± 5.4°; P = .008) and LMS (-1.7° ± 4.8° vs -4.0° ± 4.2°; P = .002) and a lower MMH (5.5 ± 0.1 vs 6.1 ± 0.1 mm; P = .006) and LMH (6.9 ± 0.1 vs 7.6 ± 0.1 mm; P = .001). The AI model selected LBS and MBS as the best possible predictive combination, achieving 70% validation accuracy and 92% testing accuracy. A prediction model for primary ACL injury, created using machine learning techniques, achieved a >90% testing accuracy. Compared with patients who did not sustain an ACL injury, patients with torn ACLs had an increased posterior LBS and LMS and a lower MMH and LMH.

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MeSH Terms

Anterior Cruciate Ligament
Anterior Cruciate Ligament Injuries
Cross-Sectional Studies
Meniscectomy
Artificial Intelligence
Bayes Theorem

DeCS Terms

Lesiones del ligamento cruzado anterior
Cirugía general
Heridas y lesiones
Imagen por resonancia magnética
Meniscectomía
Traumatismos de la rodilla

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Keywords

ACL, Anterior cruciate ligament, Anteroposterior lengths, Artificial intelligence, Bone slope, Injury, Machine learning, Meniscal height, Meniscal slope, Prediction, Risk

Citation

Tamimi I, Ballesteros J, Lara AP, Tat J, Alaqueel M, Schupbach J, et al. A Prediction Model for Primary Anterior Cruciate Ligament Injury Using Artificial Intelligence. Orthop J Sports Med. 2021 Sep 21;9(9):23259671211027543