You’re using a public version of DrugPatentWatch with 5 free searches available | Register to unlock more free searches. CREATE FREE ACCOUNT

Last Updated: April 25, 2024

Claims for Patent: 10,007,766


✉ Email this page to a colleague

« Back to Dashboard


Summary for Patent: 10,007,766
Title:Predictive test for melanoma patient benefit from antibody drug blocking ligand activation of the T-cell programmed cell death 1 (PD-1) checkpoint protein and classifier development methods
Abstract: A method is disclosed of predicting cancer patient response to immune checkpoint inhibitors, e.g., an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) or CTLA4. The method includes obtaining mass spectrometry data from a blood-based sample of the patient, obtaining integrated intensity values in the mass spectrometry data of a multitude of pre-determined mass-spectral features; and operating on the mass spectral data with a programmed computer implementing a classifier. The classifier compares the integrated intensity values with feature values of a training set of class-labeled mass spectral data obtained from a multitude of melanoma patients with a classification algorithm and generates a class label for the sample. A class label \"early\" or the equivalent predicts the patient is likely to obtain relatively less benefit from the antibody drug and the class label \"late\" or the equivalent indicates the patient is likely to obtain relatively greater benefit from the antibody drug.
Inventor(s): Roder; Joanna (Steamboat Springs, CO), Meyer; Krista (Steamboat Springs, CO), Grigorieva; Julia (Steamboat Springs, CO), Tsypin; Maxim (Steamboat Springs, CO), Oliveira; Carlos (Steamboat Springs, CO), Steingrimsson; Arni (Steamboat Springs, CO), Roder; Heinrich (Steamboat Springs, CO), Asmellash; Senait (Denver, CO), Sayers; Kevin (Denver, CO), Maher; Caroline (Denver, CO), Weber; Jeffrey (New York, NY)
Assignee: Biodesix, Inc. (Boulder, CO)
Application Number:15/207,825
Patent Claims:1. A method of detecting a class label in a melanoma patient comprising: a) conducting mass spectrometry on a blood-based sample of the patient and obtaining mass spectrometry data; (b) obtaining integrated intensity values in the mass spectrometry data of a multitude of mass-spectral features, wherein the mass-spectral features include a multitude of features listed in Appendix A, Appendix B or Appendix C; and (c) operating on the mass spectral data with a programmed computer implementing a classifier; wherein in the operating step the classifier compares the integrated intensity values with feature values of a reference set of class-labeled mass spectral data obtained from blood-based samples obtained from a multitude of other melanoma patients treated with an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) with a classification algorithm and detects a class label for the sample.

2. The method of claim 1, wherein the classifier is obtained from filtered mini-classifiers combined using a regularized combination method.

3. The method of claim 2, wherein the regularized combination method comprises repeatedly conducting logistic regression with extreme dropout on the filtered mini-classifiers.

4. A method of detecting a class label in a melanoma patient, comprising: a) conducting mass spectrometry on a blood-based sample of the patient and obtaining mass spectrometry data; (b) obtaining integrated intensity values in the mass spectrometry data of a multitude of mass-spectral features; and (c) operating on the mass spectral data with a programmed computer implementing a classifier; wherein in the operating step the classifier compares the integrated intensity values with feature values of a reference set of class-labeled mass spectral data obtained from blood-based samples obtained from a multitude of other melanoma patients treated with an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) with a classification algorithm and detects a class label for the sample wherein the classifier is obtained from filtered mini-classifiers combined using a regularized combination method, and wherein the mini-classifiers are filtered in accordance with criteria listed in Table 10.

5. The method of claim 1, wherein the classifier comprises an ensemble of tumor classifiers combined in a hierarchical manner.

6. The method of claim 1, wherein the reference set comprise a set of class-labeled mass spectral data of a development set of samples having either the class label Early or the equivalent or Late or the equivalent, wherein the samples having the class label Early are comprised of samples having relatively shorter overall survival on treatment with nivolumab as compared to samples having the class label Late.

7. The method of claim 1, wherein the mass spectral data is acquired from at least 100,000 laser shots performed on the sample using MALDI-TOF mass spectrometry.

8. The method of claim 1, wherein the mass-spectral features are selected according to their association with the biological functions Acute Response and Wound Healing.

Details for Patent 10,007,766

Applicant Tradename Biologic Ingredient Dosage Form BLA Approval Date Patent No. Expiredate
Bristol-myers Squibb Company OPDIVO nivolumab Injection 125554 12/22/2014 ⤷  Try a Trial 2035-07-13
Bristol-myers Squibb Company OPDIVO nivolumab Injection 125554 10/04/2017 ⤷  Try a Trial 2035-07-13
Bristol-myers Squibb Company OPDIVO nivolumab Injection 125554 08/27/2021 ⤷  Try a Trial 2035-07-13
>Applicant >Tradename >Biologic Ingredient >Dosage Form >BLA >Approval Date >Patent No. >Expiredate

Make Better Decisions: Try a trial or see plans & pricing

Drugs may be covered by multiple patents or regulatory protections. All trademarks and applicant names are the property of their respective owners or licensors. Although great care is taken in the proper and correct provision of this service, thinkBiotech LLC does not accept any responsibility for possible consequences of errors or omissions in the provided data. The data presented herein is for information purposes only. There is no warranty that the data contained herein is error free. thinkBiotech performs no independent verification of facts as provided by public sources nor are attempts made to provide legal or investing advice. Any reliance on data provided herein is done solely at the discretion of the user. Users of this service are advised to seek professional advice and independent confirmation before considering acting on any of the provided information. thinkBiotech LLC reserves the right to amend, extend or withdraw any part or all of the offered service without notice.