I saw, I conceived, I concluded: Progressive Concepts as Bottlenecks

11/19/2022
by   Manxi Lin, et al.
0

Concept bottleneck models (CBMs) include a bottleneck of human-interpretable concepts providing explainability and intervention during inference by correcting the predicted, intermediate concepts. This makes CBMs attractive for high-stakes decision-making. In this paper, we take the quality assessment of fetal ultrasound scans as a real-life use case for CBM decision support in healthcare. For this case, simple binary concepts are not sufficiently reliable, as they are mapped directly from images of highly variable quality, for which variable model calibration might lead to unstable binarized concepts. Moreover, scalar concepts do not provide the intuitive spatial feedback requested by users. To address this, we design a hierarchical CBM imitating the sequential expert decision-making process of "seeing", "conceiving" and "concluding". Our model first passes through a layer of visual, segmentation-based concepts, and next a second layer of property concepts directly associated with the decision-making task. We note that experts can intervene on both the visual and property concepts during inference. Additionally, we increase the bottleneck capacity by considering task-relevant concept interaction. Our application of ultrasound scan quality assessment is challenging, as it relies on balancing the (often poor) image quality against an assessment of the visibility and geometric properties of standardized image content. Our validation shows that – in contrast with previous CBM models – our CBM models actually outperform equivalent concept-free models in terms of predictive performance. Moreover, we illustrate how interventions can further improve our performance over the state-of-the-art.

READ FULL TEXT

page 9

page 10

page 11

research
02/15/2021

Learning image quality assessment by reinforcing task amenable data selection

In this paper, we consider a type of image quality assessment as a task-...
research
01/22/2023

Apples and Oranges? Assessing Image Quality over Content Recognition

Image recognition and quality assessment are two important viewing tasks...
research
01/10/2017

Full-reference image quality assessment-based B-mode ultrasound image similarity measure

During the last decades, the number of new full-reference image quality ...
research
02/05/2020

CHAIN: Concept-harmonized Hierarchical Inference Interpretation of Deep Convolutional Neural Networks

With the great success of networks, it witnesses the increasing demand f...
research
08/25/2023

Learning to Intervene on Concept Bottlenecks

While traditional deep learning models often lack interpretability, conc...
research
03/08/2023

FUSQA: Fetal Ultrasound Segmentation Quality Assessment

Deep learning models have been effective for various fetal ultrasound se...
research
02/17/2019

Semantically Interpretable and Controllable Filter Sets

In this paper, we generate and control semantically interpretable filter...

Please sign up or login with your details

Forgot password? Click here to reset