Purpose: Radiation therapy (RT) processes require significant human resources and expertise, creating a barrier to rapid RT deployment in low- and middle-income countries (LMICs). Accurate segmentation of tumor targets and organs at risk (OARs) is crucial for optimal RT. This study assessed the impact of artificial intelligence (AI)-based autosegmentation of OARs in 2 LMICs. Methods and Materials: Ten patients, comprising 5 head and neck (HN) cancer patients and 5 prostate cancer patients, were randomly selected. Planning computed tomography images were subjected to autosegmentation using an Food and Drug Administration-approved AI software tool and manual segmentation by experienced radiation oncologists from 2 LMIC RT clinics. The control data, obtained from a large academic institution in the United States, consisted of contours obtained by an experienced radiation oncologist. The segmentation time, DICE similarity coefficient (DSC), Hausdorff distance, and mean surface distance were evaluated. Results: AI significantly reduced segmentation time, averaging 2 minutes per patient, compared with 57 to 84 minutes for manual contouring in LMICs. Compared with the control data, the AI pelvic contours provided better agreement than did the LMIC manual contours (mean DSC of 0.834 vs 0.807 in LMIC1 and 0.844 vs 0.801 in LMIC2). For HN contours, AI provided better agreement for the majority of OAR contours than manual contours in LMIC1 (mean DSC: 0.823 vs 0.821) or LMIC2 (mean DSC: 0.792 vs 0.748). Neither the AI nor LMIC manual contours had good agreement with the control data (DSC < 0.600) for the optic nerves, chiasm, and cocha. Conclusions: AI-based autosegmentation generates OAR contours of comparable quality to manual segmentation for both pelvic and (c) 2024 The Author(s). Published by Elsevier Inc. on behalf of American Society for Radiation Oncology. This is an open access
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Thomas Jefferson Univ, Sidney Kimmel Med Coll, Philadelphia, PA USA
Thomas Jefferson Univ, Coll Populat Hlth, Philadelphia, PA USAThomas Jefferson Univ, Sidney Kimmel Med Coll, Philadelphia, PA USA
Rizvi, Anza
Rizvi, Fatima
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Thomas Jefferson Univ, Sidney Kimmel Med Coll, Philadelphia, PA USA
Thomas Jefferson Univ, Coll Populat Hlth, Philadelphia, PA USAThomas Jefferson Univ, Sidney Kimmel Med Coll, Philadelphia, PA USA
Rizvi, Fatima
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Lalakia, Parth
Hyman, Leslie
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Thomas Jefferson Univ, Dept Family Med, Geriatr Med & Palliat Care, Philadelphia, PA USA
Wills Eye Hosp & Res Inst, Vickie & Jack Farber Vis Res Ctr, Philadelphia, PA USAThomas Jefferson Univ, Sidney Kimmel Med Coll, Philadelphia, PA USA
Hyman, Leslie
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Frasso, Rosemary
Sztandera, Les
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Thomas Jefferson Univ, Kanbar Coll Design Engn & Commerce, Philadelphia, PA USAThomas Jefferson Univ, Sidney Kimmel Med Coll, Philadelphia, PA USA
Sztandera, Les
Das, Anthony Vipin
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LV Prasad Eye Inst, Ophthalmol, Hyderabad, IndiaThomas Jefferson Univ, Sidney Kimmel Med Coll, Philadelphia, PA USA
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Moi Teaching & Referral Hosp, Dept Pharm, POB 3, Eldoret 30100, Kenya
Purdue Univ, Coll Pharm, Dept Pharm Practice, 575 Stadium Mall Dr, W Lafayette, IN 47907 USAMoi Teaching & Referral Hosp, Dept Pharm, POB 3, Eldoret 30100, Kenya
Njuguna, Benson
Gardner, Adrian
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Indiana Univ Sch Med, Dept Med, 340 West 10th St 6200, Indianapolis, IN 46202 USA
POB 3, Eldoret 30100, KenyaMoi Teaching & Referral Hosp, Dept Pharm, POB 3, Eldoret 30100, Kenya
Gardner, Adrian
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Karwa, Rakhi
Delahaye, Francois
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Univ Claude Bernard, Equipe Accueil HESPER 7425, Hosp Civils Lyon, Hop Louis Pradel,Dept Cardiol, 28 Ave Doyen Lepine, F-69677 Lyon, FranceMoi Teaching & Referral Hosp, Dept Pharm, POB 3, Eldoret 30100, Kenya