Opening the black box of machine learning in radiology: can the proximity of annotated cases be a way?

Artificial intelligence Decision making (computer-assisted) Diagnosis Machine learning Radiology

Journal

European radiology experimental
ISSN: 2509-9280
Titre abrégé: Eur Radiol Exp
Pays: England
ID NLM: 101721752

Informations de publication

Date de publication:
05 05 2020
Historique:
received: 19 12 2019
accepted: 01 04 2020
entrez: 7 5 2020
pubmed: 7 5 2020
medline: 29 4 2021
Statut: epublish

Résumé

Machine learning (ML) and deep learning (DL) systems, currently employed in medical image analysis, are data-driven models often considered as black boxes. However, improved transparency is needed to translate automated decision-making to clinical practice. To this aim, we propose a strategy to open the black box by presenting to the radiologist the annotated cases (ACs) proximal to the current case (CC), making decision rationale and uncertainty more explicit. The ACs, used for training, validation, and testing in supervised methods and for validation and testing in the unsupervised ones, could be provided as support of the ML/DL tool. If the CC is localised in a classification space and proximal ACs are selected by proper metrics, the latter ones could be shown in their original form of images, enriched with annotation to radiologists, thus allowing immediate interpretation of the CC classification. Moreover, the density of ACs in the CC neighbourhood, their image saliency maps, classification confidence, demographics, and clinical information would be available to radiologists. Thus, encrypted information could be transmitted to radiologists, who will know model output (what) and salient image regions (where) enriched by ACs, providing classification rationale (why). Summarising, if a classifier is data-driven, let us make its interpretation data-driven too.

Identifiants

pubmed: 32372200
doi: 10.1186/s41747-020-00159-0
pii: 10.1186/s41747-020-00159-0
pmc: PMC7200961
doi:

Types de publication

Journal Article Research Support, Non-U.S. Gov't

Langues

eng

Sous-ensembles de citation

IM

Pagination

30

Références

Radiology. 2020 Apr;295(1):4-15
pubmed: 32068507
Radiographics. 2017 Mar-Apr;37(2):505-515
pubmed: 28212054
Lancet Respir Med. 2018 Nov;6(11):801
pubmed: 30343029
Nat Rev Cancer. 2018 Aug;18(8):500-510
pubmed: 29777175
Annu Rev Biomed Eng. 2017 Jun 21;19:221-248
pubmed: 28301734
Eur Radiol Exp. 2018 Oct 24;2(1):35
pubmed: 30353365
JAMA. 2019 Jan 1;321(1):31-32
pubmed: 30535130
Ann Fam Med. 2018 Jul;16(4):353-358
pubmed: 29987086
JAMA. 2017 Aug 8;318(6):517-518
pubmed: 28727867
Radiographics. 2017 Nov-Dec;37(7):2113-2131
pubmed: 29131760
N Engl J Med. 2001 Jun 28;344(26):2021-5
pubmed: 11430334
Med Image Anal. 2017 Dec;42:60-88
pubmed: 28778026

Auteurs

Giuseppe Baselli (G)

Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano, Via Golgi 39, 20133, Milan, Italy.

Marina Codari (M)

Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano, Via Golgi 39, 20133, Milan, Italy. marina.codari@polimi.it.
Present Address: Department of Radiology, Stanford University School of Medicine, 300 Pasteur Dr., Stanford, CA, 94305, USA. marina.codari@polimi.it.

Francesco Sardanelli (F)

Unit of Radiology, IRCCS Policlinico San Donato, Via Morandi 30, San Donato Milanese, 20097, Italy.
Department of Biomedical Sciences for Health, Università degli Studi di Milano, Via Morandi 30, San Donato Milanese, 20097, Italy.

Articles similaires

[Redispensing of expensive oral anticancer medicines: a practical application].

Lisanne N van Merendonk, Kübra Akgöl, Bastiaan Nuijen
1.00
Humans Antineoplastic Agents Administration, Oral Drug Costs Counterfeit Drugs

Smoking Cessation and Incident Cardiovascular Disease.

Jun Hwan Cho, Seung Yong Shin, Hoseob Kim et al.
1.00
Humans Male Smoking Cessation Cardiovascular Diseases Female
Humans United States Aged Cross-Sectional Studies Medicare Part C
1.00
Humans Yoga Low Back Pain Female Male

Classifications MeSH