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Physiologic data acquisition and analysis

a technology of physiologic data and data acquisition, applied in the field of physiologic data acquisition and analysis, can solve the problems of difficult for people to distinguish the effects of normal aging from disease, high cost, and unsatisfactory results, and achieve the effect of treatment, and improving the accuracy of clinical diagnosis

Inactive Publication Date: 2014-12-25
DIGIMARC CORP
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Benefits of technology

Medical diagnosis can be complicated because it depends on the doctor's expertise. Skin conditions can be caused by normal aging or disease, making it difficult for people to determine which treatment is needed. Rigorous diagnostic techniques can help educate the public, assist medical professionals and lower health care costs. The system uses co-occurrence information to suggest possible diagnoses based on symptoms and other factors. This can help in making a differential diagnosis from among the offered alternatives.

Problems solved by technology

It is difficult for people to differentiate the effects of normal aging from disease.
This leads to lots of worry and unnecessary doctor visits.
A skilled dermatologist may be able to accurately identify dozens of obscure conditions by their appearance, whereas a general practitioner may find even some common rashes to be confounding.
But highly skilled practitioners are sometimes puzzled, e.g., when a rash appears on a traveler recently returned from the tropics, and the practitioner has no experience with tropical medicine.
The former have been found to perform very poorly.

Method used

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  • Physiologic data acquisition and analysis
  • Physiologic data acquisition and analysis

Examples

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Embodiment Construction

[0025]FIG. 1 shows a hardware overview of one embodiment employing principles of the present technology. Included are one or more user terminals (e.g., smartphones), and a central system.

[0026]As is familiar, each smartphone includes various functional modules—shown in rectangles. These include one or more processors, a memory, a camera, and a flash. These latter two elements are controlled by the processor in accordance with operating system software and application software stored in the memory.

[0027]The central system similarly includes one or more processors, a memory, and other conventional components. Particularly shown in FIG. 1 is a knowledge base—a database data structure that facilitates storage and retrieval of data used in the present methods.

[0028]One aspect of the present technology includes the central system receiving first imagery depicting a part of a human body that evidences a symptom of a pathological condition (e.g., skin rash or bumps). This imagery (and its i...

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Abstract

The availability of high quality imagers on smartphones and other portable devices facilitates creation of a large, crowd-sourced, image reference library that depicts skin rashes and other dermatological conditions. Some of the images are uploaded with, or later annotated with, associated diagnoses or other information (e.g., “this rash went away when I stopped drinking milk”). A user uploads a new image of an unknown skin condition to the library. Image analysis techniques are employed to identify salient similarities between features of the uploaded image, and features of images in this reference library. Given the large dataset, statistically relevant correlations emerge that identify to the user certain diagnoses that may be considered, other diagnoses that may likely be ruled-out, and / or anecdotal information about similar skin conditions from other users. Similar arrangements can employ audio and / or other physiologically-derived signals. A great variety of other features and arrangements are also detailed.

Description

RELATED APPLICATION DATA[0001]This application is a continuation of international application PCT / US14 / 34706, filed Apr. 18, 2014, which claims priority to provisional application 61 / 978,632, filed Apr. 11, 2014. This application also is a continuation-in-part of application Ser. No. 14 / 206,109, filed Mar. 12, 2014, which claims priority to provisional applications 61 / 813,295, filed Apr. 18, 2013; 61 / 832,715, filed Jun. 7, 2013; 61 / 836,560, filed Jun. 18, 2013; and 61 / 872,494, filed Aug. 30, 2013. These applications are incorporated herein by reference.INTRODUCTION[0002]Medical diagnosis is an uncertain art, which depends largely on the skill and experience of the practitioner. For example, dermatological diagnosis tends to be based on very casual techniques, like observation by doctor, or on very invasive techniques, like biopsies. Skin condition degrades with age. It is difficult for people to differentiate the effects of normal aging from disease. This leads to lots of worry and ...

Claims

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Application Information

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Patent Type & Authority Applications(United States)
IPC IPC(8): A61B5/00
CPCA61B5/441A61B5/6898A61B5/0077A61B5/7246A61B5/4806G16H50/70G16H50/20G06F16/245G06F16/248A61B5/0075A61B5/1034A61B5/444A61B5/445A61B5/7278A61B5/7282A61B5/7425A61B2576/02A61B5/743A61B5/7485G16H40/67G16H30/20Y02A90/10Y02A50/30G16Z99/00G16H30/40G06T5/40G06T7/0012G06T2207/30088G10L19/018A61B5/1032
Inventor DAVIS, BRUCE L.RODRIGUEZ, TONY F.REED, ALASTAIR M.STACH, JOHNRHOADS, GEOFFREY B.CONWELL, WILLIAM Y.THAGADUR SHIVAPPA, SHANKARSHARMA, RAVI K.GIBSON, RICHARD F.
Owner DIGIMARC CORP
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