by Vemund Fredriksen, Svein Ole M. Sevle, André Pedersen, Thomas Langø, Gabriel Kiss, Frank Lindseth
Purpose
Cancer is among the leading causes of death in the developed world, and lung cancer is the most lethal type. Early detection is crucial for better prognosis, but can be resource intensive to achieve. Automating tasks such as lung tumor localization and segmentation in radiological images can free valuable time for radiologists and other clinical personnel. Convolutional neural networks may be suited for such tasks, but require substantial amounts of labeled data to train. Obtaining labeled data is a challenge, especially in the medical domain.
Methods
This paper investigates the use of a teacher-student design to utilize datasets with different types of supervision to train an automatic model performing pulmonary tumor segmentation on computed tomography images. The framework consists of two models: the student that performs end-to-end automatic tumor segmentation and the teacher that supplies the student additional pseudo-annotated data during training.
Results
Using only a small proportion of semantically labeled data and a large number of bounding box annotated data, we achieved competitive performance using a teacher-student design. Models trained on larger amounts of semantic annotations did not perform better than those trained on teacher-annotated data. Our model trained on a small number of semantically labeled data achieved a mean dice similarity coefficient of 71.0 on the MSD Lung dataset.
Conclusions
Our results demonstrate the potential of utilizing teacher-student designs to reduce the annotation load, as less supervised annotation schemes may be performed, without any real degradation in segmentation accuracy.
Филиал № 4 ОСФР по Москве и Московской области информирует:
За полгода 14,9 тысячи жителей Московского региона оформили страховую пенсию в автоматическом режиме на портале госуслуг
Представители «Метровагонмаш-Сервиса» посетили СЛД «Москва-Сортировочная» филиала «Московский» компании «ЛокоТех-Сервис» для обмена опытом
Филиал № 4 ОСФР по Москве и Московской области информирует:
С начала 2024 года 140 тысяч женщин и новорожденных Московского региона получили услуги по родовым сертификатам
Спортивные игры в СЛД "Москва-Сортировочная" филиала "Московский"
Exclusive - Sayantani Ghosh expresses happiness as sets of her show Dahej Daasi shifted close to her home; says 'I've been manifesting this for quite some time now'
Who is Ghetts and what character does the rapper play in Supacell?
Why you should buy physical copies of your favorite books
Suspect arrested for ‘threatening to kill Trump and his VP pick JD Vance’ in Florida days after assassination attempt
Филиал № 4 ОСФР по Москве и Московской области информирует:
За полгода 14,9 тысячи жителей Московского региона оформили страховую пенсию в автоматическом режиме на портале госуслуг
После появления «New Москва» на этом райском острове Богов, Россия открывает там Генеральное Консульство: русских так много, что надо их пересчитать
Самой перспективной для трудоустройства назвали Амурскую область
На линии огня. Московские спасатели борются с пожарами по всей России