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Multicentric Study for External Validation of a Deep Learning Model for Mammographic Breast Density Categorization

19. august 2021 opdateret af: Hospital Italiano de Buenos Aires
The correct categorization of breast density is essential to adapt the diagnostic examination to the needs of each patient. Assessment of breast density is performed visually by radiologists. Some authors have detected that this method involves considerable intra and interobserver variability. On the other hand, automated systems for measuring breast density are becoming more and more frequent. Machine learning is a domain of Artificial Intelligence, which comprises the process of developing systems with the ability to learn and make predictions using data. These systems are designed to aid healthcare professional decision making. In the present work, the multicenter study of external validation of a tool based on deep learning for the categorization of mammographic breast density is proposed.

Studieoversigt

Status

Ikke rekrutterer endnu

Betingelser

Detaljeret beskrivelse

The correct categorization of breast density is essential to adapt the diagnostic examination to the needs of each patient. Assessment of breast density is performed visually by radiologists. Some authors have detected that this method involves considerable intra and interobserver variability. On the other hand, automated systems for measuring breast density are becoming more and more frequent. Consequently, in clinical practice, breast density is reported from the assessment carried out by specialists with the support of these systems. But there are few studies about the use, concordance and perception of usefulness of professionals on these tools. A study carried out at the Hospital Italiano de Buenos Aires reported a moderate to almost perfect inter- and intra-observer agreement among radiologists and a moderate concordance between the categorization carried out by experts and that carried out by commercial software of a digital mammography machine. Machine learning is a domain of Artificial Intelligence, which comprises the process of developing systems with the ability to learn and make predictions using data. Once a system designed to aid healthcare professional decision making is developed, it must be validated. In 2019, an internal validation of a tool based on deep learning techniques was carried out for the automatic categorization of mammographic breast density. The tool reached a very good interobserver agreement, kappa = 0.64 (95% CI 0.58-0.69), when compared with the performance of the professionals. It reached a sensitivity of 83.2 (CI: 76.9-88.3) and a specificity of 88.4 (83.9-92.0.) In the present work, the multicenter study of external validation of a tool based on deep learning for the categorization of mammographic breast density is proposed. The evaluation of this tool will be carried out in two external institutions: Hospital Alemán and Fundación Científica del Sur.

Undersøgelsestype

Observationel

Tilmelding (Forventet)

277

Kontakter og lokationer

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Studiekontakt

Deltagelseskriterier

Forskere leder efter personer, der passer til en bestemt beskrivelse, kaldet berettigelseskriterier. Nogle eksempler på disse kriterier er en persons generelle helbredstilstand eller tidligere behandlinger.

Berettigelseskriterier

Aldre berettiget til at studere

  • Barn
  • Voksen
  • Ældre voksen

Tager imod sunde frivillige

Ja

Køn, der er berettiget til at studere

Alle

Prøveudtagningsmetode

Ikke-sandsynlighedsprøve

Studiebefolkning

The unit of analysis will be the bilateral mammographic images with mediolateral oblique and craniocaudal views. The images selected for this study will be screening mammograms performed at Saint John's Cancer Institute. The institution will select the images according to the inclusion and exclusion criteria. The images will be extracted from the institutional database retrospectively and will be anonymized without any personal data, except for the age of the patient. These images will be stored in DICOM format, in a safe place with restricted access limited only to the investigation team.

Beskrivelse

Inclusion Criteria:

  • Mammograms included in the study should meet the following criteria:

    • Female patients of 40 years of age or more.
    • To have at least one screening mammography exam performed at Saint John's
    • Cancer Institute during the study period. These exams will be included regardless of the brand of the mammography equipment.
    • Mammograms should be performed with digital equipment.

Exclusion Criteria:

  • Mammograms with the following criteria will be excluded from the study:

    • Patients with gigantomastia, defined by the need for more than one image of each mammographic view (mediolateral oblique and craniocaudal) to evaluate the entire breast volume.
    • Patients with breast implants.
    • Patients with a history of breast surgery.

Studieplan

Dette afsnit indeholder detaljer om studieplanen, herunder hvordan undersøgelsen er designet, og hvad undersøgelsen måler.

Hvordan er undersøgelsen tilrettelagt?

Design detaljer

Hvad måler undersøgelsen?

Primære resultatmål

Resultatmål
Foranstaltningsbeskrivelse
Tidsramme
Agreement between the majority report and Artemisia´s categorization of dense breasts/non-dense breasts
Tidsramme: 2 months
The agreement between the CNN and the total of the professionals' categorizations will be calculated with the linear weighted kappa. To this end, the categories assigned by the professionals will be considered as only one observer in each one of the studies and they will be compared to those assigned by Artemisia for the same set of images.
2 months
Agreement between the majority report and Artemisia in each one of the four breast density categories
Tidsramme: 2 months
For each one of the professionals involved in the study, the agreement with the CNN will be calculated with the linear weighted kappa coefficient. To this end, the categories assigned by the professionals will be considered as only one observer in each one of the studies and they will be compared to those assigned by Artemisia for the same set of images.
2 months

Sekundære resultatmål

Resultatmål
Foranstaltningsbeskrivelse
Tidsramme
Agreement between each observer and Artemisia´s categorization of dense breasts/non-dense breasts
Tidsramme: 2 months
To this end, the categories assigned by the professionals will be considered as only one observer in each one of the studies and they will be compared to those assigned by Artemisia for the same set of images.
2 months
Agreement between each observer and Artemisia in each one of the four breast density categories
Tidsramme: 2 months
For each one of the professionals involved in the study, the agreement with the CNN will be calculated with the linear weighted kappa coefficient. To this end, the categories assigned by the professionals will be considered as only one observer in each one of the studies and they will be compared to those assigned by Artemisia for the same set of images.
2 months
Agreement between each observer and the majority report in the categorization of dense breasts/non-dense breasts
Tidsramme: 2 months
For each one of the professionals involved in the study, the agreement with the majority report will be calculated with the linear weighted kappa coefficient. To this end, the categories assigned by the professionals will be considered as only one observer in each one of the studies and they will be compared to those assigned by the majority report for the same set of images.
2 months
Agreement between each observer and the majority report in each one of the four breast density categories
Tidsramme: 2 months
For each one of the professionals involved in the study, the agreement with the majority report will be calculated with the linear weighted kappa coefficient. To this end, the categories assigned by the professionals will be considered as only one observer in each one of the studies and they will be compared to those assigned by the majority report for the same set of images.
2 months

Samarbejdspartnere og efterforskere

Det er her, du vil finde personer og organisationer, der er involveret i denne undersøgelse.

Efterforskere

  • Ledende efterforsker: Daniel R Luna, MD, Hospital Italiano de Buenos Aires

Publikationer og nyttige links

Den person, der er ansvarlig for at indtaste oplysninger om undersøgelsen, leverer frivilligt disse publikationer. Disse kan handle om alt relateret til undersøgelsen.

Generelle publikationer

Datoer for undersøgelser

Disse datoer sporer fremskridtene for indsendelser af undersøgelsesrekord og resumeresultater til ClinicalTrials.gov. Studieregistreringer og rapporterede resultater gennemgås af National Library of Medicine (NLM) for at sikre, at de opfylder specifikke kvalitetskontrolstandarder, før de offentliggøres på den offentlige hjemmeside.

Studer store datoer

Studiestart (Forventet)

1. september 2021

Primær færdiggørelse (Forventet)

1. april 2022

Studieafslutning (Forventet)

1. juli 2022

Datoer for studieregistrering

Først indsendt

19. august 2021

Først indsendt, der opfyldte QC-kriterier

19. august 2021

Først opslået (Faktiske)

25. august 2021

Opdateringer af undersøgelsesjournaler

Sidste opdatering sendt (Faktiske)

25. august 2021

Sidste opdatering indsendt, der opfyldte kvalitetskontrolkriterier

19. august 2021

Sidst verificeret

1. juli 2021

Mere information

Begreber relateret til denne undersøgelse

Andre undersøgelses-id-numre

  • 6077
  • 4927 (PRIISA)

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