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Том 18   Выпуск 1   Год 2023
Абхигьян Натх1, Судама Ратор1, Пангамбам Сендаш Сингх2

Использование ансамблевого обучения и пространства отрицательной выборки для прогнозирования взаимодействий между белками внеклеточного матрикса

Математическая биология и биоинформатика. 2023;18(1):113-127.

doi: 10.17537/2023.18.113.

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Содержание Оригинальная статья
Мат. биол. и биоинф.
doi: 10.17537/2023.18.113
опубликована на англ. яз.

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